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libstdc++
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00001 // random number generation -*- C++ -*- 00002 00003 // Copyright (C) 2009-2012 Free Software Foundation, Inc. 00004 // 00005 // This file is part of the GNU ISO C++ Library. This library is free 00006 // software; you can redistribute it and/or modify it under the 00007 // terms of the GNU General Public License as published by the 00008 // Free Software Foundation; either version 3, or (at your option) 00009 // any later version. 00010 00011 // This library is distributed in the hope that it will be useful, 00012 // but WITHOUT ANY WARRANTY; without even the implied warranty of 00013 // MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the 00014 // GNU General Public License for more details. 00015 00016 // Under Section 7 of GPL version 3, you are granted additional 00017 // permissions described in the GCC Runtime Library Exception, version 00018 // 3.1, as published by the Free Software Foundation. 00019 00020 // You should have received a copy of the GNU General Public License and 00021 // a copy of the GCC Runtime Library Exception along with this program; 00022 // see the files COPYING3 and COPYING.RUNTIME respectively. If not, see 00023 // <http://www.gnu.org/licenses/>. 00024 00025 /** 00026 * @file bits/random.h 00027 * This is an internal header file, included by other library headers. 00028 * Do not attempt to use it directly. @headername{random} 00029 */ 00030 00031 #ifndef _RANDOM_H 00032 #define _RANDOM_H 1 00033 00034 #include <vector> 00035 00036 namespace std _GLIBCXX_VISIBILITY(default) 00037 { 00038 _GLIBCXX_BEGIN_NAMESPACE_VERSION 00039 00040 // [26.4] Random number generation 00041 00042 /** 00043 * @defgroup random Random Number Generation 00044 * @ingroup numerics 00045 * 00046 * A facility for generating random numbers on selected distributions. 00047 * @{ 00048 */ 00049 00050 /** 00051 * @brief A function template for converting the output of a (integral) 00052 * uniform random number generator to a floatng point result in the range 00053 * [0-1). 00054 */ 00055 template<typename _RealType, size_t __bits, 00056 typename _UniformRandomNumberGenerator> 00057 _RealType 00058 generate_canonical(_UniformRandomNumberGenerator& __g); 00059 00060 _GLIBCXX_END_NAMESPACE_VERSION 00061 00062 /* 00063 * Implementation-space details. 00064 */ 00065 namespace __detail 00066 { 00067 _GLIBCXX_BEGIN_NAMESPACE_VERSION 00068 00069 template<typename _UIntType, size_t __w, 00070 bool = __w < static_cast<size_t> 00071 (std::numeric_limits<_UIntType>::digits)> 00072 struct _Shift 00073 { static const _UIntType __value = 0; }; 00074 00075 template<typename _UIntType, size_t __w> 00076 struct _Shift<_UIntType, __w, true> 00077 { static const _UIntType __value = _UIntType(1) << __w; }; 00078 00079 template<typename _Tp, _Tp __m, _Tp __a, _Tp __c, bool> 00080 struct _Mod; 00081 00082 // Dispatch based on modulus value to prevent divide-by-zero compile-time 00083 // errors when m == 0. 00084 template<typename _Tp, _Tp __m, _Tp __a = 1, _Tp __c = 0> 00085 inline _Tp 00086 __mod(_Tp __x) 00087 { return _Mod<_Tp, __m, __a, __c, __m == 0>::__calc(__x); } 00088 00089 /* 00090 * An adaptor class for converting the output of any Generator into 00091 * the input for a specific Distribution. 00092 */ 00093 template<typename _Engine, typename _DInputType> 00094 struct _Adaptor 00095 { 00096 00097 public: 00098 _Adaptor(_Engine& __g) 00099 : _M_g(__g) { } 00100 00101 _DInputType 00102 min() const 00103 { return _DInputType(0); } 00104 00105 _DInputType 00106 max() const 00107 { return _DInputType(1); } 00108 00109 /* 00110 * Converts a value generated by the adapted random number generator 00111 * into a value in the input domain for the dependent random number 00112 * distribution. 00113 */ 00114 _DInputType 00115 operator()() 00116 { 00117 return std::generate_canonical<_DInputType, 00118 std::numeric_limits<_DInputType>::digits, 00119 _Engine>(_M_g); 00120 } 00121 00122 private: 00123 _Engine& _M_g; 00124 }; 00125 00126 _GLIBCXX_END_NAMESPACE_VERSION 00127 } // namespace __detail 00128 00129 _GLIBCXX_BEGIN_NAMESPACE_VERSION 00130 00131 /** 00132 * @addtogroup random_generators Random Number Generators 00133 * @ingroup random 00134 * 00135 * These classes define objects which provide random or pseudorandom 00136 * numbers, either from a discrete or a continuous interval. The 00137 * random number generator supplied as a part of this library are 00138 * all uniform random number generators which provide a sequence of 00139 * random number uniformly distributed over their range. 00140 * 00141 * A number generator is a function object with an operator() that 00142 * takes zero arguments and returns a number. 00143 * 00144 * A compliant random number generator must satisfy the following 00145 * requirements. <table border=1 cellpadding=10 cellspacing=0> 00146 * <caption align=top>Random Number Generator Requirements</caption> 00147 * <tr><td>To be documented.</td></tr> </table> 00148 * 00149 * @{ 00150 */ 00151 00152 /** 00153 * @brief A model of a linear congruential random number generator. 00154 * 00155 * A random number generator that produces pseudorandom numbers via 00156 * linear function: 00157 * @f[ 00158 * x_{i+1}\leftarrow(ax_{i} + c) \bmod m 00159 * @f] 00160 * 00161 * The template parameter @p _UIntType must be an unsigned integral type 00162 * large enough to store values up to (__m-1). If the template parameter 00163 * @p __m is 0, the modulus @p __m used is 00164 * std::numeric_limits<_UIntType>::max() plus 1. Otherwise, the template 00165 * parameters @p __a and @p __c must be less than @p __m. 00166 * 00167 * The size of the state is @f$1@f$. 00168 */ 00169 template<typename _UIntType, _UIntType __a, _UIntType __c, _UIntType __m> 00170 class linear_congruential_engine 00171 { 00172 static_assert(std::is_unsigned<_UIntType>::value, "template argument " 00173 "substituting _UIntType not an unsigned integral type"); 00174 static_assert(__m == 0u || (__a < __m && __c < __m), 00175 "template argument substituting __m out of bounds"); 00176 00177 // XXX FIXME: 00178 // _Mod::__calc should handle correctly __m % __a >= __m / __a too. 00179 static_assert(__m % __a < __m / __a, 00180 "sorry, not implemented yet: try a smaller 'a' constant"); 00181 00182 public: 00183 /** The type of the generated random value. */ 00184 typedef _UIntType result_type; 00185 00186 /** The multiplier. */ 00187 static constexpr result_type multiplier = __a; 00188 /** An increment. */ 00189 static constexpr result_type increment = __c; 00190 /** The modulus. */ 00191 static constexpr result_type modulus = __m; 00192 static constexpr result_type default_seed = 1u; 00193 00194 /** 00195 * @brief Constructs a %linear_congruential_engine random number 00196 * generator engine with seed @p __s. The default seed value 00197 * is 1. 00198 * 00199 * @param __s The initial seed value. 00200 */ 00201 explicit 00202 linear_congruential_engine(result_type __s = default_seed) 00203 { seed(__s); } 00204 00205 /** 00206 * @brief Constructs a %linear_congruential_engine random number 00207 * generator engine seeded from the seed sequence @p __q. 00208 * 00209 * @param __q the seed sequence. 00210 */ 00211 template<typename _Sseq, typename = typename 00212 std::enable_if<!std::is_same<_Sseq, linear_congruential_engine>::value> 00213 ::type> 00214 explicit 00215 linear_congruential_engine(_Sseq& __q) 00216 { seed(__q); } 00217 00218 /** 00219 * @brief Reseeds the %linear_congruential_engine random number generator 00220 * engine sequence to the seed @p __s. 00221 * 00222 * @param __s The new seed. 00223 */ 00224 void 00225 seed(result_type __s = default_seed); 00226 00227 /** 00228 * @brief Reseeds the %linear_congruential_engine random number generator 00229 * engine 00230 * sequence using values from the seed sequence @p __q. 00231 * 00232 * @param __q the seed sequence. 00233 */ 00234 template<typename _Sseq> 00235 typename std::enable_if<std::is_class<_Sseq>::value>::type 00236 seed(_Sseq& __q); 00237 00238 /** 00239 * @brief Gets the smallest possible value in the output range. 00240 * 00241 * The minimum depends on the @p __c parameter: if it is zero, the 00242 * minimum generated must be > 0, otherwise 0 is allowed. 00243 */ 00244 static constexpr result_type 00245 min() 00246 { return __c == 0u ? 1u : 0u; } 00247 00248 /** 00249 * @brief Gets the largest possible value in the output range. 00250 */ 00251 static constexpr result_type 00252 max() 00253 { return __m - 1u; } 00254 00255 /** 00256 * @brief Discard a sequence of random numbers. 00257 */ 00258 void 00259 discard(unsigned long long __z) 00260 { 00261 for (; __z != 0ULL; --__z) 00262 (*this)(); 00263 } 00264 00265 /** 00266 * @brief Gets the next random number in the sequence. 00267 */ 00268 result_type 00269 operator()() 00270 { 00271 _M_x = __detail::__mod<_UIntType, __m, __a, __c>(_M_x); 00272 return _M_x; 00273 } 00274 00275 /** 00276 * @brief Compares two linear congruential random number generator 00277 * objects of the same type for equality. 00278 * 00279 * @param __lhs A linear congruential random number generator object. 00280 * @param __rhs Another linear congruential random number generator 00281 * object. 00282 * 00283 * @returns true if the infinite sequences of generated values 00284 * would be equal, false otherwise. 00285 */ 00286 friend bool 00287 operator==(const linear_congruential_engine& __lhs, 00288 const linear_congruential_engine& __rhs) 00289 { return __lhs._M_x == __rhs._M_x; } 00290 00291 /** 00292 * @brief Writes the textual representation of the state x(i) of x to 00293 * @p __os. 00294 * 00295 * @param __os The output stream. 00296 * @param __lcr A % linear_congruential_engine random number generator. 00297 * @returns __os. 00298 */ 00299 template<typename _UIntType1, _UIntType1 __a1, _UIntType1 __c1, 00300 _UIntType1 __m1, typename _CharT, typename _Traits> 00301 friend std::basic_ostream<_CharT, _Traits>& 00302 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 00303 const std::linear_congruential_engine<_UIntType1, 00304 __a1, __c1, __m1>& __lcr); 00305 00306 /** 00307 * @brief Sets the state of the engine by reading its textual 00308 * representation from @p __is. 00309 * 00310 * The textual representation must have been previously written using 00311 * an output stream whose imbued locale and whose type's template 00312 * specialization arguments _CharT and _Traits were the same as those 00313 * of @p __is. 00314 * 00315 * @param __is The input stream. 00316 * @param __lcr A % linear_congruential_engine random number generator. 00317 * @returns __is. 00318 */ 00319 template<typename _UIntType1, _UIntType1 __a1, _UIntType1 __c1, 00320 _UIntType1 __m1, typename _CharT, typename _Traits> 00321 friend std::basic_istream<_CharT, _Traits>& 00322 operator>>(std::basic_istream<_CharT, _Traits>& __is, 00323 std::linear_congruential_engine<_UIntType1, __a1, 00324 __c1, __m1>& __lcr); 00325 00326 private: 00327 _UIntType _M_x; 00328 }; 00329 00330 /** 00331 * @brief Compares two linear congruential random number generator 00332 * objects of the same type for inequality. 00333 * 00334 * @param __lhs A linear congruential random number generator object. 00335 * @param __rhs Another linear congruential random number generator 00336 * object. 00337 * 00338 * @returns true if the infinite sequences of generated values 00339 * would be different, false otherwise. 00340 */ 00341 template<typename _UIntType, _UIntType __a, _UIntType __c, _UIntType __m> 00342 inline bool 00343 operator!=(const std::linear_congruential_engine<_UIntType, __a, 00344 __c, __m>& __lhs, 00345 const std::linear_congruential_engine<_UIntType, __a, 00346 __c, __m>& __rhs) 00347 { return !(__lhs == __rhs); } 00348 00349 00350 /** 00351 * A generalized feedback shift register discrete random number generator. 00352 * 00353 * This algorithm avoids multiplication and division and is designed to be 00354 * friendly to a pipelined architecture. If the parameters are chosen 00355 * correctly, this generator will produce numbers with a very long period and 00356 * fairly good apparent entropy, although still not cryptographically strong. 00357 * 00358 * The best way to use this generator is with the predefined mt19937 class. 00359 * 00360 * This algorithm was originally invented by Makoto Matsumoto and 00361 * Takuji Nishimura. 00362 * 00363 * @tparam __w Word size, the number of bits in each element of 00364 * the state vector. 00365 * @tparam __n The degree of recursion. 00366 * @tparam __m The period parameter. 00367 * @tparam __r The separation point bit index. 00368 * @tparam __a The last row of the twist matrix. 00369 * @tparam __u The first right-shift tempering matrix parameter. 00370 * @tparam __d The first right-shift tempering matrix mask. 00371 * @tparam __s The first left-shift tempering matrix parameter. 00372 * @tparam __b The first left-shift tempering matrix mask. 00373 * @tparam __t The second left-shift tempering matrix parameter. 00374 * @tparam __c The second left-shift tempering matrix mask. 00375 * @tparam __l The second right-shift tempering matrix parameter. 00376 * @tparam __f Initialization multiplier. 00377 */ 00378 template<typename _UIntType, size_t __w, 00379 size_t __n, size_t __m, size_t __r, 00380 _UIntType __a, size_t __u, _UIntType __d, size_t __s, 00381 _UIntType __b, size_t __t, 00382 _UIntType __c, size_t __l, _UIntType __f> 00383 class mersenne_twister_engine 00384 { 00385 static_assert(std::is_unsigned<_UIntType>::value, "template argument " 00386 "substituting _UIntType not an unsigned integral type"); 00387 static_assert(1u <= __m && __m <= __n, 00388 "template argument substituting __m out of bounds"); 00389 static_assert(__r <= __w, "template argument substituting " 00390 "__r out of bound"); 00391 static_assert(__u <= __w, "template argument substituting " 00392 "__u out of bound"); 00393 static_assert(__s <= __w, "template argument substituting " 00394 "__s out of bound"); 00395 static_assert(__t <= __w, "template argument substituting " 00396 "__t out of bound"); 00397 static_assert(__l <= __w, "template argument substituting " 00398 "__l out of bound"); 00399 static_assert(__w <= std::numeric_limits<_UIntType>::digits, 00400 "template argument substituting __w out of bound"); 00401 static_assert(__a <= (__detail::_Shift<_UIntType, __w>::__value - 1), 00402 "template argument substituting __a out of bound"); 00403 static_assert(__b <= (__detail::_Shift<_UIntType, __w>::__value - 1), 00404 "template argument substituting __b out of bound"); 00405 static_assert(__c <= (__detail::_Shift<_UIntType, __w>::__value - 1), 00406 "template argument substituting __c out of bound"); 00407 static_assert(__d <= (__detail::_Shift<_UIntType, __w>::__value - 1), 00408 "template argument substituting __d out of bound"); 00409 static_assert(__f <= (__detail::_Shift<_UIntType, __w>::__value - 1), 00410 "template argument substituting __f out of bound"); 00411 00412 public: 00413 /** The type of the generated random value. */ 00414 typedef _UIntType result_type; 00415 00416 // parameter values 00417 static constexpr size_t word_size = __w; 00418 static constexpr size_t state_size = __n; 00419 static constexpr size_t shift_size = __m; 00420 static constexpr size_t mask_bits = __r; 00421 static constexpr result_type xor_mask = __a; 00422 static constexpr size_t tempering_u = __u; 00423 static constexpr result_type tempering_d = __d; 00424 static constexpr size_t tempering_s = __s; 00425 static constexpr result_type tempering_b = __b; 00426 static constexpr size_t tempering_t = __t; 00427 static constexpr result_type tempering_c = __c; 00428 static constexpr size_t tempering_l = __l; 00429 static constexpr result_type initialization_multiplier = __f; 00430 static constexpr result_type default_seed = 5489u; 00431 00432 // constructors and member function 00433 explicit 00434 mersenne_twister_engine(result_type __sd = default_seed) 00435 { seed(__sd); } 00436 00437 /** 00438 * @brief Constructs a %mersenne_twister_engine random number generator 00439 * engine seeded from the seed sequence @p __q. 00440 * 00441 * @param __q the seed sequence. 00442 */ 00443 template<typename _Sseq, typename = typename 00444 std::enable_if<!std::is_same<_Sseq, mersenne_twister_engine>::value> 00445 ::type> 00446 explicit 00447 mersenne_twister_engine(_Sseq& __q) 00448 { seed(__q); } 00449 00450 void 00451 seed(result_type __sd = default_seed); 00452 00453 template<typename _Sseq> 00454 typename std::enable_if<std::is_class<_Sseq>::value>::type 00455 seed(_Sseq& __q); 00456 00457 /** 00458 * @brief Gets the smallest possible value in the output range. 00459 */ 00460 static constexpr result_type 00461 min() 00462 { return 0; }; 00463 00464 /** 00465 * @brief Gets the largest possible value in the output range. 00466 */ 00467 static constexpr result_type 00468 max() 00469 { return __detail::_Shift<_UIntType, __w>::__value - 1; } 00470 00471 /** 00472 * @brief Discard a sequence of random numbers. 00473 */ 00474 void 00475 discard(unsigned long long __z) 00476 { 00477 for (; __z != 0ULL; --__z) 00478 (*this)(); 00479 } 00480 00481 result_type 00482 operator()(); 00483 00484 /** 00485 * @brief Compares two % mersenne_twister_engine random number generator 00486 * objects of the same type for equality. 00487 * 00488 * @param __lhs A % mersenne_twister_engine random number generator 00489 * object. 00490 * @param __rhs Another % mersenne_twister_engine random number 00491 * generator object. 00492 * 00493 * @returns true if the infinite sequences of generated values 00494 * would be equal, false otherwise. 00495 */ 00496 friend bool 00497 operator==(const mersenne_twister_engine& __lhs, 00498 const mersenne_twister_engine& __rhs) 00499 { return (std::equal(__lhs._M_x, __lhs._M_x + state_size, __rhs._M_x) 00500 && __lhs._M_p == __rhs._M_p); } 00501 00502 /** 00503 * @brief Inserts the current state of a % mersenne_twister_engine 00504 * random number generator engine @p __x into the output stream 00505 * @p __os. 00506 * 00507 * @param __os An output stream. 00508 * @param __x A % mersenne_twister_engine random number generator 00509 * engine. 00510 * 00511 * @returns The output stream with the state of @p __x inserted or in 00512 * an error state. 00513 */ 00514 template<typename _UIntType1, 00515 size_t __w1, size_t __n1, 00516 size_t __m1, size_t __r1, 00517 _UIntType1 __a1, size_t __u1, 00518 _UIntType1 __d1, size_t __s1, 00519 _UIntType1 __b1, size_t __t1, 00520 _UIntType1 __c1, size_t __l1, _UIntType1 __f1, 00521 typename _CharT, typename _Traits> 00522 friend std::basic_ostream<_CharT, _Traits>& 00523 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 00524 const std::mersenne_twister_engine<_UIntType1, __w1, __n1, 00525 __m1, __r1, __a1, __u1, __d1, __s1, __b1, __t1, __c1, 00526 __l1, __f1>& __x); 00527 00528 /** 00529 * @brief Extracts the current state of a % mersenne_twister_engine 00530 * random number generator engine @p __x from the input stream 00531 * @p __is. 00532 * 00533 * @param __is An input stream. 00534 * @param __x A % mersenne_twister_engine random number generator 00535 * engine. 00536 * 00537 * @returns The input stream with the state of @p __x extracted or in 00538 * an error state. 00539 */ 00540 template<typename _UIntType1, 00541 size_t __w1, size_t __n1, 00542 size_t __m1, size_t __r1, 00543 _UIntType1 __a1, size_t __u1, 00544 _UIntType1 __d1, size_t __s1, 00545 _UIntType1 __b1, size_t __t1, 00546 _UIntType1 __c1, size_t __l1, _UIntType1 __f1, 00547 typename _CharT, typename _Traits> 00548 friend std::basic_istream<_CharT, _Traits>& 00549 operator>>(std::basic_istream<_CharT, _Traits>& __is, 00550 std::mersenne_twister_engine<_UIntType1, __w1, __n1, __m1, 00551 __r1, __a1, __u1, __d1, __s1, __b1, __t1, __c1, 00552 __l1, __f1>& __x); 00553 00554 private: 00555 _UIntType _M_x[state_size]; 00556 size_t _M_p; 00557 }; 00558 00559 /** 00560 * @brief Compares two % mersenne_twister_engine random number generator 00561 * objects of the same type for inequality. 00562 * 00563 * @param __lhs A % mersenne_twister_engine random number generator 00564 * object. 00565 * @param __rhs Another % mersenne_twister_engine random number 00566 * generator object. 00567 * 00568 * @returns true if the infinite sequences of generated values 00569 * would be different, false otherwise. 00570 */ 00571 template<typename _UIntType, size_t __w, 00572 size_t __n, size_t __m, size_t __r, 00573 _UIntType __a, size_t __u, _UIntType __d, size_t __s, 00574 _UIntType __b, size_t __t, 00575 _UIntType __c, size_t __l, _UIntType __f> 00576 inline bool 00577 operator!=(const std::mersenne_twister_engine<_UIntType, __w, __n, __m, 00578 __r, __a, __u, __d, __s, __b, __t, __c, __l, __f>& __lhs, 00579 const std::mersenne_twister_engine<_UIntType, __w, __n, __m, 00580 __r, __a, __u, __d, __s, __b, __t, __c, __l, __f>& __rhs) 00581 { return !(__lhs == __rhs); } 00582 00583 00584 /** 00585 * @brief The Marsaglia-Zaman generator. 00586 * 00587 * This is a model of a Generalized Fibonacci discrete random number 00588 * generator, sometimes referred to as the SWC generator. 00589 * 00590 * A discrete random number generator that produces pseudorandom 00591 * numbers using: 00592 * @f[ 00593 * x_{i}\leftarrow(x_{i - s} - x_{i - r} - carry_{i-1}) \bmod m 00594 * @f] 00595 * 00596 * The size of the state is @f$r@f$ 00597 * and the maximum period of the generator is @f$(m^r - m^s - 1)@f$. 00598 * 00599 * @var _M_x The state of the generator. This is a ring buffer. 00600 * @var _M_carry The carry. 00601 * @var _M_p Current index of x(i - r). 00602 */ 00603 template<typename _UIntType, size_t __w, size_t __s, size_t __r> 00604 class subtract_with_carry_engine 00605 { 00606 static_assert(std::is_unsigned<_UIntType>::value, "template argument " 00607 "substituting _UIntType not an unsigned integral type"); 00608 static_assert(0u < __s && __s < __r, 00609 "template argument substituting __s out of bounds"); 00610 static_assert(0u < __w && __w <= std::numeric_limits<_UIntType>::digits, 00611 "template argument substituting __w out of bounds"); 00612 00613 public: 00614 /** The type of the generated random value. */ 00615 typedef _UIntType result_type; 00616 00617 // parameter values 00618 static constexpr size_t word_size = __w; 00619 static constexpr size_t short_lag = __s; 00620 static constexpr size_t long_lag = __r; 00621 static constexpr result_type default_seed = 19780503u; 00622 00623 /** 00624 * @brief Constructs an explicitly seeded % subtract_with_carry_engine 00625 * random number generator. 00626 */ 00627 explicit 00628 subtract_with_carry_engine(result_type __sd = default_seed) 00629 { seed(__sd); } 00630 00631 /** 00632 * @brief Constructs a %subtract_with_carry_engine random number engine 00633 * seeded from the seed sequence @p __q. 00634 * 00635 * @param __q the seed sequence. 00636 */ 00637 template<typename _Sseq, typename = typename 00638 std::enable_if<!std::is_same<_Sseq, subtract_with_carry_engine>::value> 00639 ::type> 00640 explicit 00641 subtract_with_carry_engine(_Sseq& __q) 00642 { seed(__q); } 00643 00644 /** 00645 * @brief Seeds the initial state @f$x_0@f$ of the random number 00646 * generator. 00647 * 00648 * N1688[4.19] modifies this as follows. If @p __value == 0, 00649 * sets value to 19780503. In any case, with a linear 00650 * congruential generator lcg(i) having parameters @f$ m_{lcg} = 00651 * 2147483563, a_{lcg} = 40014, c_{lcg} = 0, and lcg(0) = value 00652 * @f$, sets @f$ x_{-r} \dots x_{-1} @f$ to @f$ lcg(1) \bmod m 00653 * \dots lcg(r) \bmod m @f$ respectively. If @f$ x_{-1} = 0 @f$ 00654 * set carry to 1, otherwise sets carry to 0. 00655 */ 00656 void 00657 seed(result_type __sd = default_seed); 00658 00659 /** 00660 * @brief Seeds the initial state @f$x_0@f$ of the 00661 * % subtract_with_carry_engine random number generator. 00662 */ 00663 template<typename _Sseq> 00664 typename std::enable_if<std::is_class<_Sseq>::value>::type 00665 seed(_Sseq& __q); 00666 00667 /** 00668 * @brief Gets the inclusive minimum value of the range of random 00669 * integers returned by this generator. 00670 */ 00671 static constexpr result_type 00672 min() 00673 { return 0; } 00674 00675 /** 00676 * @brief Gets the inclusive maximum value of the range of random 00677 * integers returned by this generator. 00678 */ 00679 static constexpr result_type 00680 max() 00681 { return __detail::_Shift<_UIntType, __w>::__value - 1; } 00682 00683 /** 00684 * @brief Discard a sequence of random numbers. 00685 */ 00686 void 00687 discard(unsigned long long __z) 00688 { 00689 for (; __z != 0ULL; --__z) 00690 (*this)(); 00691 } 00692 00693 /** 00694 * @brief Gets the next random number in the sequence. 00695 */ 00696 result_type 00697 operator()(); 00698 00699 /** 00700 * @brief Compares two % subtract_with_carry_engine random number 00701 * generator objects of the same type for equality. 00702 * 00703 * @param __lhs A % subtract_with_carry_engine random number generator 00704 * object. 00705 * @param __rhs Another % subtract_with_carry_engine random number 00706 * generator object. 00707 * 00708 * @returns true if the infinite sequences of generated values 00709 * would be equal, false otherwise. 00710 */ 00711 friend bool 00712 operator==(const subtract_with_carry_engine& __lhs, 00713 const subtract_with_carry_engine& __rhs) 00714 { return (std::equal(__lhs._M_x, __lhs._M_x + long_lag, __rhs._M_x) 00715 && __lhs._M_carry == __rhs._M_carry 00716 && __lhs._M_p == __rhs._M_p); } 00717 00718 /** 00719 * @brief Inserts the current state of a % subtract_with_carry_engine 00720 * random number generator engine @p __x into the output stream 00721 * @p __os. 00722 * 00723 * @param __os An output stream. 00724 * @param __x A % subtract_with_carry_engine random number generator 00725 * engine. 00726 * 00727 * @returns The output stream with the state of @p __x inserted or in 00728 * an error state. 00729 */ 00730 template<typename _UIntType1, size_t __w1, size_t __s1, size_t __r1, 00731 typename _CharT, typename _Traits> 00732 friend std::basic_ostream<_CharT, _Traits>& 00733 operator<<(std::basic_ostream<_CharT, _Traits>&, 00734 const std::subtract_with_carry_engine<_UIntType1, __w1, 00735 __s1, __r1>&); 00736 00737 /** 00738 * @brief Extracts the current state of a % subtract_with_carry_engine 00739 * random number generator engine @p __x from the input stream 00740 * @p __is. 00741 * 00742 * @param __is An input stream. 00743 * @param __x A % subtract_with_carry_engine random number generator 00744 * engine. 00745 * 00746 * @returns The input stream with the state of @p __x extracted or in 00747 * an error state. 00748 */ 00749 template<typename _UIntType1, size_t __w1, size_t __s1, size_t __r1, 00750 typename _CharT, typename _Traits> 00751 friend std::basic_istream<_CharT, _Traits>& 00752 operator>>(std::basic_istream<_CharT, _Traits>&, 00753 std::subtract_with_carry_engine<_UIntType1, __w1, 00754 __s1, __r1>&); 00755 00756 private: 00757 _UIntType _M_x[long_lag]; 00758 _UIntType _M_carry; 00759 size_t _M_p; 00760 }; 00761 00762 /** 00763 * @brief Compares two % subtract_with_carry_engine random number 00764 * generator objects of the same type for inequality. 00765 * 00766 * @param __lhs A % subtract_with_carry_engine random number generator 00767 * object. 00768 * @param __rhs Another % subtract_with_carry_engine random number 00769 * generator object. 00770 * 00771 * @returns true if the infinite sequences of generated values 00772 * would be different, false otherwise. 00773 */ 00774 template<typename _UIntType, size_t __w, size_t __s, size_t __r> 00775 inline bool 00776 operator!=(const std::subtract_with_carry_engine<_UIntType, __w, 00777 __s, __r>& __lhs, 00778 const std::subtract_with_carry_engine<_UIntType, __w, 00779 __s, __r>& __rhs) 00780 { return !(__lhs == __rhs); } 00781 00782 00783 /** 00784 * Produces random numbers from some base engine by discarding blocks of 00785 * data. 00786 * 00787 * 0 <= @p __r <= @p __p 00788 */ 00789 template<typename _RandomNumberEngine, size_t __p, size_t __r> 00790 class discard_block_engine 00791 { 00792 static_assert(1 <= __r && __r <= __p, 00793 "template argument substituting __r out of bounds"); 00794 00795 public: 00796 /** The type of the generated random value. */ 00797 typedef typename _RandomNumberEngine::result_type result_type; 00798 00799 // parameter values 00800 static constexpr size_t block_size = __p; 00801 static constexpr size_t used_block = __r; 00802 00803 /** 00804 * @brief Constructs a default %discard_block_engine engine. 00805 * 00806 * The underlying engine is default constructed as well. 00807 */ 00808 discard_block_engine() 00809 : _M_b(), _M_n(0) { } 00810 00811 /** 00812 * @brief Copy constructs a %discard_block_engine engine. 00813 * 00814 * Copies an existing base class random number generator. 00815 * @param __rng An existing (base class) engine object. 00816 */ 00817 explicit 00818 discard_block_engine(const _RandomNumberEngine& __rng) 00819 : _M_b(__rng), _M_n(0) { } 00820 00821 /** 00822 * @brief Move constructs a %discard_block_engine engine. 00823 * 00824 * Copies an existing base class random number generator. 00825 * @param __rng An existing (base class) engine object. 00826 */ 00827 explicit 00828 discard_block_engine(_RandomNumberEngine&& __rng) 00829 : _M_b(std::move(__rng)), _M_n(0) { } 00830 00831 /** 00832 * @brief Seed constructs a %discard_block_engine engine. 00833 * 00834 * Constructs the underlying generator engine seeded with @p __s. 00835 * @param __s A seed value for the base class engine. 00836 */ 00837 explicit 00838 discard_block_engine(result_type __s) 00839 : _M_b(__s), _M_n(0) { } 00840 00841 /** 00842 * @brief Generator construct a %discard_block_engine engine. 00843 * 00844 * @param __q A seed sequence. 00845 */ 00846 template<typename _Sseq, typename = typename 00847 std::enable_if<!std::is_same<_Sseq, discard_block_engine>::value 00848 && !std::is_same<_Sseq, _RandomNumberEngine>::value> 00849 ::type> 00850 explicit 00851 discard_block_engine(_Sseq& __q) 00852 : _M_b(__q), _M_n(0) 00853 { } 00854 00855 /** 00856 * @brief Reseeds the %discard_block_engine object with the default 00857 * seed for the underlying base class generator engine. 00858 */ 00859 void 00860 seed() 00861 { 00862 _M_b.seed(); 00863 _M_n = 0; 00864 } 00865 00866 /** 00867 * @brief Reseeds the %discard_block_engine object with the default 00868 * seed for the underlying base class generator engine. 00869 */ 00870 void 00871 seed(result_type __s) 00872 { 00873 _M_b.seed(__s); 00874 _M_n = 0; 00875 } 00876 00877 /** 00878 * @brief Reseeds the %discard_block_engine object with the given seed 00879 * sequence. 00880 * @param __q A seed generator function. 00881 */ 00882 template<typename _Sseq> 00883 void 00884 seed(_Sseq& __q) 00885 { 00886 _M_b.seed(__q); 00887 _M_n = 0; 00888 } 00889 00890 /** 00891 * @brief Gets a const reference to the underlying generator engine 00892 * object. 00893 */ 00894 const _RandomNumberEngine& 00895 base() const noexcept 00896 { return _M_b; } 00897 00898 /** 00899 * @brief Gets the minimum value in the generated random number range. 00900 */ 00901 static constexpr result_type 00902 min() 00903 { return _RandomNumberEngine::min(); } 00904 00905 /** 00906 * @brief Gets the maximum value in the generated random number range. 00907 */ 00908 static constexpr result_type 00909 max() 00910 { return _RandomNumberEngine::max(); } 00911 00912 /** 00913 * @brief Discard a sequence of random numbers. 00914 */ 00915 void 00916 discard(unsigned long long __z) 00917 { 00918 for (; __z != 0ULL; --__z) 00919 (*this)(); 00920 } 00921 00922 /** 00923 * @brief Gets the next value in the generated random number sequence. 00924 */ 00925 result_type 00926 operator()(); 00927 00928 /** 00929 * @brief Compares two %discard_block_engine random number generator 00930 * objects of the same type for equality. 00931 * 00932 * @param __lhs A %discard_block_engine random number generator object. 00933 * @param __rhs Another %discard_block_engine random number generator 00934 * object. 00935 * 00936 * @returns true if the infinite sequences of generated values 00937 * would be equal, false otherwise. 00938 */ 00939 friend bool 00940 operator==(const discard_block_engine& __lhs, 00941 const discard_block_engine& __rhs) 00942 { return __lhs._M_b == __rhs._M_b && __lhs._M_n == __rhs._M_n; } 00943 00944 /** 00945 * @brief Inserts the current state of a %discard_block_engine random 00946 * number generator engine @p __x into the output stream 00947 * @p __os. 00948 * 00949 * @param __os An output stream. 00950 * @param __x A %discard_block_engine random number generator engine. 00951 * 00952 * @returns The output stream with the state of @p __x inserted or in 00953 * an error state. 00954 */ 00955 template<typename _RandomNumberEngine1, size_t __p1, size_t __r1, 00956 typename _CharT, typename _Traits> 00957 friend std::basic_ostream<_CharT, _Traits>& 00958 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 00959 const std::discard_block_engine<_RandomNumberEngine1, 00960 __p1, __r1>& __x); 00961 00962 /** 00963 * @brief Extracts the current state of a % subtract_with_carry_engine 00964 * random number generator engine @p __x from the input stream 00965 * @p __is. 00966 * 00967 * @param __is An input stream. 00968 * @param __x A %discard_block_engine random number generator engine. 00969 * 00970 * @returns The input stream with the state of @p __x extracted or in 00971 * an error state. 00972 */ 00973 template<typename _RandomNumberEngine1, size_t __p1, size_t __r1, 00974 typename _CharT, typename _Traits> 00975 friend std::basic_istream<_CharT, _Traits>& 00976 operator>>(std::basic_istream<_CharT, _Traits>& __is, 00977 std::discard_block_engine<_RandomNumberEngine1, 00978 __p1, __r1>& __x); 00979 00980 private: 00981 _RandomNumberEngine _M_b; 00982 size_t _M_n; 00983 }; 00984 00985 /** 00986 * @brief Compares two %discard_block_engine random number generator 00987 * objects of the same type for inequality. 00988 * 00989 * @param __lhs A %discard_block_engine random number generator object. 00990 * @param __rhs Another %discard_block_engine random number generator 00991 * object. 00992 * 00993 * @returns true if the infinite sequences of generated values 00994 * would be different, false otherwise. 00995 */ 00996 template<typename _RandomNumberEngine, size_t __p, size_t __r> 00997 inline bool 00998 operator!=(const std::discard_block_engine<_RandomNumberEngine, __p, 00999 __r>& __lhs, 01000 const std::discard_block_engine<_RandomNumberEngine, __p, 01001 __r>& __rhs) 01002 { return !(__lhs == __rhs); } 01003 01004 01005 /** 01006 * Produces random numbers by combining random numbers from some base 01007 * engine to produce random numbers with a specifies number of bits @p __w. 01008 */ 01009 template<typename _RandomNumberEngine, size_t __w, typename _UIntType> 01010 class independent_bits_engine 01011 { 01012 static_assert(std::is_unsigned<_UIntType>::value, "template argument " 01013 "substituting _UIntType not an unsigned integral type"); 01014 static_assert(0u < __w && __w <= std::numeric_limits<_UIntType>::digits, 01015 "template argument substituting __w out of bounds"); 01016 01017 public: 01018 /** The type of the generated random value. */ 01019 typedef _UIntType result_type; 01020 01021 /** 01022 * @brief Constructs a default %independent_bits_engine engine. 01023 * 01024 * The underlying engine is default constructed as well. 01025 */ 01026 independent_bits_engine() 01027 : _M_b() { } 01028 01029 /** 01030 * @brief Copy constructs a %independent_bits_engine engine. 01031 * 01032 * Copies an existing base class random number generator. 01033 * @param __rng An existing (base class) engine object. 01034 */ 01035 explicit 01036 independent_bits_engine(const _RandomNumberEngine& __rng) 01037 : _M_b(__rng) { } 01038 01039 /** 01040 * @brief Move constructs a %independent_bits_engine engine. 01041 * 01042 * Copies an existing base class random number generator. 01043 * @param __rng An existing (base class) engine object. 01044 */ 01045 explicit 01046 independent_bits_engine(_RandomNumberEngine&& __rng) 01047 : _M_b(std::move(__rng)) { } 01048 01049 /** 01050 * @brief Seed constructs a %independent_bits_engine engine. 01051 * 01052 * Constructs the underlying generator engine seeded with @p __s. 01053 * @param __s A seed value for the base class engine. 01054 */ 01055 explicit 01056 independent_bits_engine(result_type __s) 01057 : _M_b(__s) { } 01058 01059 /** 01060 * @brief Generator construct a %independent_bits_engine engine. 01061 * 01062 * @param __q A seed sequence. 01063 */ 01064 template<typename _Sseq, typename = typename 01065 std::enable_if<!std::is_same<_Sseq, independent_bits_engine>::value 01066 && !std::is_same<_Sseq, _RandomNumberEngine>::value> 01067 ::type> 01068 explicit 01069 independent_bits_engine(_Sseq& __q) 01070 : _M_b(__q) 01071 { } 01072 01073 /** 01074 * @brief Reseeds the %independent_bits_engine object with the default 01075 * seed for the underlying base class generator engine. 01076 */ 01077 void 01078 seed() 01079 { _M_b.seed(); } 01080 01081 /** 01082 * @brief Reseeds the %independent_bits_engine object with the default 01083 * seed for the underlying base class generator engine. 01084 */ 01085 void 01086 seed(result_type __s) 01087 { _M_b.seed(__s); } 01088 01089 /** 01090 * @brief Reseeds the %independent_bits_engine object with the given 01091 * seed sequence. 01092 * @param __q A seed generator function. 01093 */ 01094 template<typename _Sseq> 01095 void 01096 seed(_Sseq& __q) 01097 { _M_b.seed(__q); } 01098 01099 /** 01100 * @brief Gets a const reference to the underlying generator engine 01101 * object. 01102 */ 01103 const _RandomNumberEngine& 01104 base() const noexcept 01105 { return _M_b; } 01106 01107 /** 01108 * @brief Gets the minimum value in the generated random number range. 01109 */ 01110 static constexpr result_type 01111 min() 01112 { return 0U; } 01113 01114 /** 01115 * @brief Gets the maximum value in the generated random number range. 01116 */ 01117 static constexpr result_type 01118 max() 01119 { return __detail::_Shift<_UIntType, __w>::__value - 1; } 01120 01121 /** 01122 * @brief Discard a sequence of random numbers. 01123 */ 01124 void 01125 discard(unsigned long long __z) 01126 { 01127 for (; __z != 0ULL; --__z) 01128 (*this)(); 01129 } 01130 01131 /** 01132 * @brief Gets the next value in the generated random number sequence. 01133 */ 01134 result_type 01135 operator()(); 01136 01137 /** 01138 * @brief Compares two %independent_bits_engine random number generator 01139 * objects of the same type for equality. 01140 * 01141 * @param __lhs A %independent_bits_engine random number generator 01142 * object. 01143 * @param __rhs Another %independent_bits_engine random number generator 01144 * object. 01145 * 01146 * @returns true if the infinite sequences of generated values 01147 * would be equal, false otherwise. 01148 */ 01149 friend bool 01150 operator==(const independent_bits_engine& __lhs, 01151 const independent_bits_engine& __rhs) 01152 { return __lhs._M_b == __rhs._M_b; } 01153 01154 /** 01155 * @brief Extracts the current state of a % subtract_with_carry_engine 01156 * random number generator engine @p __x from the input stream 01157 * @p __is. 01158 * 01159 * @param __is An input stream. 01160 * @param __x A %independent_bits_engine random number generator 01161 * engine. 01162 * 01163 * @returns The input stream with the state of @p __x extracted or in 01164 * an error state. 01165 */ 01166 template<typename _CharT, typename _Traits> 01167 friend std::basic_istream<_CharT, _Traits>& 01168 operator>>(std::basic_istream<_CharT, _Traits>& __is, 01169 std::independent_bits_engine<_RandomNumberEngine, 01170 __w, _UIntType>& __x) 01171 { 01172 __is >> __x._M_b; 01173 return __is; 01174 } 01175 01176 private: 01177 _RandomNumberEngine _M_b; 01178 }; 01179 01180 /** 01181 * @brief Compares two %independent_bits_engine random number generator 01182 * objects of the same type for inequality. 01183 * 01184 * @param __lhs A %independent_bits_engine random number generator 01185 * object. 01186 * @param __rhs Another %independent_bits_engine random number generator 01187 * object. 01188 * 01189 * @returns true if the infinite sequences of generated values 01190 * would be different, false otherwise. 01191 */ 01192 template<typename _RandomNumberEngine, size_t __w, typename _UIntType> 01193 inline bool 01194 operator!=(const std::independent_bits_engine<_RandomNumberEngine, __w, 01195 _UIntType>& __lhs, 01196 const std::independent_bits_engine<_RandomNumberEngine, __w, 01197 _UIntType>& __rhs) 01198 { return !(__lhs == __rhs); } 01199 01200 /** 01201 * @brief Inserts the current state of a %independent_bits_engine random 01202 * number generator engine @p __x into the output stream @p __os. 01203 * 01204 * @param __os An output stream. 01205 * @param __x A %independent_bits_engine random number generator engine. 01206 * 01207 * @returns The output stream with the state of @p __x inserted or in 01208 * an error state. 01209 */ 01210 template<typename _RandomNumberEngine, size_t __w, typename _UIntType, 01211 typename _CharT, typename _Traits> 01212 std::basic_ostream<_CharT, _Traits>& 01213 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 01214 const std::independent_bits_engine<_RandomNumberEngine, 01215 __w, _UIntType>& __x) 01216 { 01217 __os << __x.base(); 01218 return __os; 01219 } 01220 01221 01222 /** 01223 * @brief Produces random numbers by combining random numbers from some 01224 * base engine to produce random numbers with a specifies number of bits 01225 * @p __w. 01226 */ 01227 template<typename _RandomNumberEngine, size_t __k> 01228 class shuffle_order_engine 01229 { 01230 static_assert(1u <= __k, "template argument substituting " 01231 "__k out of bound"); 01232 01233 public: 01234 /** The type of the generated random value. */ 01235 typedef typename _RandomNumberEngine::result_type result_type; 01236 01237 static constexpr size_t table_size = __k; 01238 01239 /** 01240 * @brief Constructs a default %shuffle_order_engine engine. 01241 * 01242 * The underlying engine is default constructed as well. 01243 */ 01244 shuffle_order_engine() 01245 : _M_b() 01246 { _M_initialize(); } 01247 01248 /** 01249 * @brief Copy constructs a %shuffle_order_engine engine. 01250 * 01251 * Copies an existing base class random number generator. 01252 * @param __rng An existing (base class) engine object. 01253 */ 01254 explicit 01255 shuffle_order_engine(const _RandomNumberEngine& __rng) 01256 : _M_b(__rng) 01257 { _M_initialize(); } 01258 01259 /** 01260 * @brief Move constructs a %shuffle_order_engine engine. 01261 * 01262 * Copies an existing base class random number generator. 01263 * @param __rng An existing (base class) engine object. 01264 */ 01265 explicit 01266 shuffle_order_engine(_RandomNumberEngine&& __rng) 01267 : _M_b(std::move(__rng)) 01268 { _M_initialize(); } 01269 01270 /** 01271 * @brief Seed constructs a %shuffle_order_engine engine. 01272 * 01273 * Constructs the underlying generator engine seeded with @p __s. 01274 * @param __s A seed value for the base class engine. 01275 */ 01276 explicit 01277 shuffle_order_engine(result_type __s) 01278 : _M_b(__s) 01279 { _M_initialize(); } 01280 01281 /** 01282 * @brief Generator construct a %shuffle_order_engine engine. 01283 * 01284 * @param __q A seed sequence. 01285 */ 01286 template<typename _Sseq, typename = typename 01287 std::enable_if<!std::is_same<_Sseq, shuffle_order_engine>::value 01288 && !std::is_same<_Sseq, _RandomNumberEngine>::value> 01289 ::type> 01290 explicit 01291 shuffle_order_engine(_Sseq& __q) 01292 : _M_b(__q) 01293 { _M_initialize(); } 01294 01295 /** 01296 * @brief Reseeds the %shuffle_order_engine object with the default seed 01297 for the underlying base class generator engine. 01298 */ 01299 void 01300 seed() 01301 { 01302 _M_b.seed(); 01303 _M_initialize(); 01304 } 01305 01306 /** 01307 * @brief Reseeds the %shuffle_order_engine object with the default seed 01308 * for the underlying base class generator engine. 01309 */ 01310 void 01311 seed(result_type __s) 01312 { 01313 _M_b.seed(__s); 01314 _M_initialize(); 01315 } 01316 01317 /** 01318 * @brief Reseeds the %shuffle_order_engine object with the given seed 01319 * sequence. 01320 * @param __q A seed generator function. 01321 */ 01322 template<typename _Sseq> 01323 void 01324 seed(_Sseq& __q) 01325 { 01326 _M_b.seed(__q); 01327 _M_initialize(); 01328 } 01329 01330 /** 01331 * Gets a const reference to the underlying generator engine object. 01332 */ 01333 const _RandomNumberEngine& 01334 base() const noexcept 01335 { return _M_b; } 01336 01337 /** 01338 * Gets the minimum value in the generated random number range. 01339 */ 01340 static constexpr result_type 01341 min() 01342 { return _RandomNumberEngine::min(); } 01343 01344 /** 01345 * Gets the maximum value in the generated random number range. 01346 */ 01347 static constexpr result_type 01348 max() 01349 { return _RandomNumberEngine::max(); } 01350 01351 /** 01352 * Discard a sequence of random numbers. 01353 */ 01354 void 01355 discard(unsigned long long __z) 01356 { 01357 for (; __z != 0ULL; --__z) 01358 (*this)(); 01359 } 01360 01361 /** 01362 * Gets the next value in the generated random number sequence. 01363 */ 01364 result_type 01365 operator()(); 01366 01367 /** 01368 * Compares two %shuffle_order_engine random number generator objects 01369 * of the same type for equality. 01370 * 01371 * @param __lhs A %shuffle_order_engine random number generator object. 01372 * @param __rhs Another %shuffle_order_engine random number generator 01373 * object. 01374 * 01375 * @returns true if the infinite sequences of generated values 01376 * would be equal, false otherwise. 01377 */ 01378 friend bool 01379 operator==(const shuffle_order_engine& __lhs, 01380 const shuffle_order_engine& __rhs) 01381 { return (__lhs._M_b == __rhs._M_b 01382 && std::equal(__lhs._M_v, __lhs._M_v + __k, __rhs._M_v) 01383 && __lhs._M_y == __rhs._M_y); } 01384 01385 /** 01386 * @brief Inserts the current state of a %shuffle_order_engine random 01387 * number generator engine @p __x into the output stream 01388 @p __os. 01389 * 01390 * @param __os An output stream. 01391 * @param __x A %shuffle_order_engine random number generator engine. 01392 * 01393 * @returns The output stream with the state of @p __x inserted or in 01394 * an error state. 01395 */ 01396 template<typename _RandomNumberEngine1, size_t __k1, 01397 typename _CharT, typename _Traits> 01398 friend std::basic_ostream<_CharT, _Traits>& 01399 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 01400 const std::shuffle_order_engine<_RandomNumberEngine1, 01401 __k1>& __x); 01402 01403 /** 01404 * @brief Extracts the current state of a % subtract_with_carry_engine 01405 * random number generator engine @p __x from the input stream 01406 * @p __is. 01407 * 01408 * @param __is An input stream. 01409 * @param __x A %shuffle_order_engine random number generator engine. 01410 * 01411 * @returns The input stream with the state of @p __x extracted or in 01412 * an error state. 01413 */ 01414 template<typename _RandomNumberEngine1, size_t __k1, 01415 typename _CharT, typename _Traits> 01416 friend std::basic_istream<_CharT, _Traits>& 01417 operator>>(std::basic_istream<_CharT, _Traits>& __is, 01418 std::shuffle_order_engine<_RandomNumberEngine1, __k1>& __x); 01419 01420 private: 01421 void _M_initialize() 01422 { 01423 for (size_t __i = 0; __i < __k; ++__i) 01424 _M_v[__i] = _M_b(); 01425 _M_y = _M_b(); 01426 } 01427 01428 _RandomNumberEngine _M_b; 01429 result_type _M_v[__k]; 01430 result_type _M_y; 01431 }; 01432 01433 /** 01434 * Compares two %shuffle_order_engine random number generator objects 01435 * of the same type for inequality. 01436 * 01437 * @param __lhs A %shuffle_order_engine random number generator object. 01438 * @param __rhs Another %shuffle_order_engine random number generator 01439 * object. 01440 * 01441 * @returns true if the infinite sequences of generated values 01442 * would be different, false otherwise. 01443 */ 01444 template<typename _RandomNumberEngine, size_t __k> 01445 inline bool 01446 operator!=(const std::shuffle_order_engine<_RandomNumberEngine, 01447 __k>& __lhs, 01448 const std::shuffle_order_engine<_RandomNumberEngine, 01449 __k>& __rhs) 01450 { return !(__lhs == __rhs); } 01451 01452 01453 /** 01454 * The classic Minimum Standard rand0 of Lewis, Goodman, and Miller. 01455 */ 01456 typedef linear_congruential_engine<uint_fast32_t, 16807UL, 0UL, 2147483647UL> 01457 minstd_rand0; 01458 01459 /** 01460 * An alternative LCR (Lehmer Generator function). 01461 */ 01462 typedef linear_congruential_engine<uint_fast32_t, 48271UL, 0UL, 2147483647UL> 01463 minstd_rand; 01464 01465 /** 01466 * The classic Mersenne Twister. 01467 * 01468 * Reference: 01469 * M. Matsumoto and T. Nishimura, Mersenne Twister: A 623-Dimensionally 01470 * Equidistributed Uniform Pseudo-Random Number Generator, ACM Transactions 01471 * on Modeling and Computer Simulation, Vol. 8, No. 1, January 1998, pp 3-30. 01472 */ 01473 typedef mersenne_twister_engine< 01474 uint_fast32_t, 01475 32, 624, 397, 31, 01476 0x9908b0dfUL, 11, 01477 0xffffffffUL, 7, 01478 0x9d2c5680UL, 15, 01479 0xefc60000UL, 18, 1812433253UL> mt19937; 01480 01481 /** 01482 * An alternative Mersenne Twister. 01483 */ 01484 typedef mersenne_twister_engine< 01485 uint_fast64_t, 01486 64, 312, 156, 31, 01487 0xb5026f5aa96619e9ULL, 29, 01488 0x5555555555555555ULL, 17, 01489 0x71d67fffeda60000ULL, 37, 01490 0xfff7eee000000000ULL, 43, 01491 6364136223846793005ULL> mt19937_64; 01492 01493 typedef subtract_with_carry_engine<uint_fast32_t, 24, 10, 24> 01494 ranlux24_base; 01495 01496 typedef subtract_with_carry_engine<uint_fast64_t, 48, 5, 12> 01497 ranlux48_base; 01498 01499 typedef discard_block_engine<ranlux24_base, 223, 23> ranlux24; 01500 01501 typedef discard_block_engine<ranlux48_base, 389, 11> ranlux48; 01502 01503 typedef shuffle_order_engine<minstd_rand0, 256> knuth_b; 01504 01505 typedef minstd_rand0 default_random_engine; 01506 01507 /** 01508 * A standard interface to a platform-specific non-deterministic 01509 * random number generator (if any are available). 01510 */ 01511 class random_device 01512 { 01513 public: 01514 /** The type of the generated random value. */ 01515 typedef unsigned int result_type; 01516 01517 // constructors, destructors and member functions 01518 01519 #ifdef _GLIBCXX_USE_RANDOM_TR1 01520 01521 explicit 01522 random_device(const std::string& __token = "/dev/urandom") 01523 { 01524 if ((__token != "/dev/urandom" && __token != "/dev/random") 01525 || !(_M_file = std::fopen(__token.c_str(), "rb"))) 01526 std::__throw_runtime_error(__N("random_device::" 01527 "random_device(const std::string&)")); 01528 } 01529 01530 ~random_device() 01531 { std::fclose(_M_file); } 01532 01533 #else 01534 01535 explicit 01536 random_device(const std::string& __token = "mt19937") 01537 : _M_mt(_M_strtoul(__token)) { } 01538 01539 private: 01540 static unsigned long 01541 _M_strtoul(const std::string& __str) 01542 { 01543 unsigned long __ret = 5489UL; 01544 if (__str != "mt19937") 01545 { 01546 const char* __nptr = __str.c_str(); 01547 char* __endptr; 01548 __ret = std::strtoul(__nptr, &__endptr, 0); 01549 if (*__nptr == '\0' || *__endptr != '\0') 01550 std::__throw_runtime_error(__N("random_device::_M_strtoul" 01551 "(const std::string&)")); 01552 } 01553 return __ret; 01554 } 01555 01556 public: 01557 01558 #endif 01559 01560 static constexpr result_type 01561 min() 01562 { return std::numeric_limits<result_type>::min(); } 01563 01564 static constexpr result_type 01565 max() 01566 { return std::numeric_limits<result_type>::max(); } 01567 01568 double 01569 entropy() const noexcept 01570 { return 0.0; } 01571 01572 result_type 01573 operator()() 01574 { 01575 #ifdef _GLIBCXX_USE_RANDOM_TR1 01576 result_type __ret; 01577 std::fread(reinterpret_cast<void*>(&__ret), sizeof(result_type), 01578 1, _M_file); 01579 return __ret; 01580 #else 01581 return _M_mt(); 01582 #endif 01583 } 01584 01585 // No copy functions. 01586 random_device(const random_device&) = delete; 01587 void operator=(const random_device&) = delete; 01588 01589 private: 01590 01591 #ifdef _GLIBCXX_USE_RANDOM_TR1 01592 FILE* _M_file; 01593 #else 01594 mt19937 _M_mt; 01595 #endif 01596 }; 01597 01598 /* @} */ // group random_generators 01599 01600 /** 01601 * @addtogroup random_distributions Random Number Distributions 01602 * @ingroup random 01603 * @{ 01604 */ 01605 01606 /** 01607 * @addtogroup random_distributions_uniform Uniform Distributions 01608 * @ingroup random_distributions 01609 * @{ 01610 */ 01611 01612 /** 01613 * @brief Uniform discrete distribution for random numbers. 01614 * A discrete random distribution on the range @f$[min, max]@f$ with equal 01615 * probability throughout the range. 01616 */ 01617 template<typename _IntType = int> 01618 class uniform_int_distribution 01619 { 01620 static_assert(std::is_integral<_IntType>::value, 01621 "template argument not an integral type"); 01622 01623 public: 01624 /** The type of the range of the distribution. */ 01625 typedef _IntType result_type; 01626 /** Parameter type. */ 01627 struct param_type 01628 { 01629 typedef uniform_int_distribution<_IntType> distribution_type; 01630 01631 explicit 01632 param_type(_IntType __a = 0, 01633 _IntType __b = std::numeric_limits<_IntType>::max()) 01634 : _M_a(__a), _M_b(__b) 01635 { 01636 _GLIBCXX_DEBUG_ASSERT(_M_a <= _M_b); 01637 } 01638 01639 result_type 01640 a() const 01641 { return _M_a; } 01642 01643 result_type 01644 b() const 01645 { return _M_b; } 01646 01647 friend bool 01648 operator==(const param_type& __p1, const param_type& __p2) 01649 { return __p1._M_a == __p2._M_a && __p1._M_b == __p2._M_b; } 01650 01651 private: 01652 _IntType _M_a; 01653 _IntType _M_b; 01654 }; 01655 01656 public: 01657 /** 01658 * @brief Constructs a uniform distribution object. 01659 */ 01660 explicit 01661 uniform_int_distribution(_IntType __a = 0, 01662 _IntType __b = std::numeric_limits<_IntType>::max()) 01663 : _M_param(__a, __b) 01664 { } 01665 01666 explicit 01667 uniform_int_distribution(const param_type& __p) 01668 : _M_param(__p) 01669 { } 01670 01671 /** 01672 * @brief Resets the distribution state. 01673 * 01674 * Does nothing for the uniform integer distribution. 01675 */ 01676 void 01677 reset() { } 01678 01679 result_type 01680 a() const 01681 { return _M_param.a(); } 01682 01683 result_type 01684 b() const 01685 { return _M_param.b(); } 01686 01687 /** 01688 * @brief Returns the parameter set of the distribution. 01689 */ 01690 param_type 01691 param() const 01692 { return _M_param; } 01693 01694 /** 01695 * @brief Sets the parameter set of the distribution. 01696 * @param __param The new parameter set of the distribution. 01697 */ 01698 void 01699 param(const param_type& __param) 01700 { _M_param = __param; } 01701 01702 /** 01703 * @brief Returns the inclusive lower bound of the distribution range. 01704 */ 01705 result_type 01706 min() const 01707 { return this->a(); } 01708 01709 /** 01710 * @brief Returns the inclusive upper bound of the distribution range. 01711 */ 01712 result_type 01713 max() const 01714 { return this->b(); } 01715 01716 /** 01717 * @brief Generating functions. 01718 */ 01719 template<typename _UniformRandomNumberGenerator> 01720 result_type 01721 operator()(_UniformRandomNumberGenerator& __urng) 01722 { return this->operator()(__urng, _M_param); } 01723 01724 template<typename _UniformRandomNumberGenerator> 01725 result_type 01726 operator()(_UniformRandomNumberGenerator& __urng, 01727 const param_type& __p); 01728 01729 /** 01730 * @brief Return true if two uniform integer distributions have 01731 * the same parameters. 01732 */ 01733 friend bool 01734 operator==(const uniform_int_distribution& __d1, 01735 const uniform_int_distribution& __d2) 01736 { return __d1._M_param == __d2._M_param; } 01737 01738 private: 01739 param_type _M_param; 01740 }; 01741 01742 /** 01743 * @brief Return true if two uniform integer distributions have 01744 * different parameters. 01745 */ 01746 template<typename _IntType> 01747 inline bool 01748 operator!=(const std::uniform_int_distribution<_IntType>& __d1, 01749 const std::uniform_int_distribution<_IntType>& __d2) 01750 { return !(__d1 == __d2); } 01751 01752 /** 01753 * @brief Inserts a %uniform_int_distribution random number 01754 * distribution @p __x into the output stream @p os. 01755 * 01756 * @param __os An output stream. 01757 * @param __x A %uniform_int_distribution random number distribution. 01758 * 01759 * @returns The output stream with the state of @p __x inserted or in 01760 * an error state. 01761 */ 01762 template<typename _IntType, typename _CharT, typename _Traits> 01763 std::basic_ostream<_CharT, _Traits>& 01764 operator<<(std::basic_ostream<_CharT, _Traits>&, 01765 const std::uniform_int_distribution<_IntType>&); 01766 01767 /** 01768 * @brief Extracts a %uniform_int_distribution random number distribution 01769 * @p __x from the input stream @p __is. 01770 * 01771 * @param __is An input stream. 01772 * @param __x A %uniform_int_distribution random number generator engine. 01773 * 01774 * @returns The input stream with @p __x extracted or in an error state. 01775 */ 01776 template<typename _IntType, typename _CharT, typename _Traits> 01777 std::basic_istream<_CharT, _Traits>& 01778 operator>>(std::basic_istream<_CharT, _Traits>&, 01779 std::uniform_int_distribution<_IntType>&); 01780 01781 01782 /** 01783 * @brief Uniform continuous distribution for random numbers. 01784 * 01785 * A continuous random distribution on the range [min, max) with equal 01786 * probability throughout the range. The URNG should be real-valued and 01787 * deliver number in the range [0, 1). 01788 */ 01789 template<typename _RealType = double> 01790 class uniform_real_distribution 01791 { 01792 static_assert(std::is_floating_point<_RealType>::value, 01793 "template argument not a floating point type"); 01794 01795 public: 01796 /** The type of the range of the distribution. */ 01797 typedef _RealType result_type; 01798 /** Parameter type. */ 01799 struct param_type 01800 { 01801 typedef uniform_real_distribution<_RealType> distribution_type; 01802 01803 explicit 01804 param_type(_RealType __a = _RealType(0), 01805 _RealType __b = _RealType(1)) 01806 : _M_a(__a), _M_b(__b) 01807 { 01808 _GLIBCXX_DEBUG_ASSERT(_M_a <= _M_b); 01809 } 01810 01811 result_type 01812 a() const 01813 { return _M_a; } 01814 01815 result_type 01816 b() const 01817 { return _M_b; } 01818 01819 friend bool 01820 operator==(const param_type& __p1, const param_type& __p2) 01821 { return __p1._M_a == __p2._M_a && __p1._M_b == __p2._M_b; } 01822 01823 private: 01824 _RealType _M_a; 01825 _RealType _M_b; 01826 }; 01827 01828 public: 01829 /** 01830 * @brief Constructs a uniform_real_distribution object. 01831 * 01832 * @param __a [IN] The lower bound of the distribution. 01833 * @param __b [IN] The upper bound of the distribution. 01834 */ 01835 explicit 01836 uniform_real_distribution(_RealType __a = _RealType(0), 01837 _RealType __b = _RealType(1)) 01838 : _M_param(__a, __b) 01839 { } 01840 01841 explicit 01842 uniform_real_distribution(const param_type& __p) 01843 : _M_param(__p) 01844 { } 01845 01846 /** 01847 * @brief Resets the distribution state. 01848 * 01849 * Does nothing for the uniform real distribution. 01850 */ 01851 void 01852 reset() { } 01853 01854 result_type 01855 a() const 01856 { return _M_param.a(); } 01857 01858 result_type 01859 b() const 01860 { return _M_param.b(); } 01861 01862 /** 01863 * @brief Returns the parameter set of the distribution. 01864 */ 01865 param_type 01866 param() const 01867 { return _M_param; } 01868 01869 /** 01870 * @brief Sets the parameter set of the distribution. 01871 * @param __param The new parameter set of the distribution. 01872 */ 01873 void 01874 param(const param_type& __param) 01875 { _M_param = __param; } 01876 01877 /** 01878 * @brief Returns the inclusive lower bound of the distribution range. 01879 */ 01880 result_type 01881 min() const 01882 { return this->a(); } 01883 01884 /** 01885 * @brief Returns the inclusive upper bound of the distribution range. 01886 */ 01887 result_type 01888 max() const 01889 { return this->b(); } 01890 01891 /** 01892 * @brief Generating functions. 01893 */ 01894 template<typename _UniformRandomNumberGenerator> 01895 result_type 01896 operator()(_UniformRandomNumberGenerator& __urng) 01897 { return this->operator()(__urng, _M_param); } 01898 01899 template<typename _UniformRandomNumberGenerator> 01900 result_type 01901 operator()(_UniformRandomNumberGenerator& __urng, 01902 const param_type& __p) 01903 { 01904 __detail::_Adaptor<_UniformRandomNumberGenerator, result_type> 01905 __aurng(__urng); 01906 return (__aurng() * (__p.b() - __p.a())) + __p.a(); 01907 } 01908 01909 /** 01910 * @brief Return true if two uniform real distributions have 01911 * the same parameters. 01912 */ 01913 friend bool 01914 operator==(const uniform_real_distribution& __d1, 01915 const uniform_real_distribution& __d2) 01916 { return __d1._M_param == __d2._M_param; } 01917 01918 private: 01919 param_type _M_param; 01920 }; 01921 01922 /** 01923 * @brief Return true if two uniform real distributions have 01924 * different parameters. 01925 */ 01926 template<typename _IntType> 01927 inline bool 01928 operator!=(const std::uniform_real_distribution<_IntType>& __d1, 01929 const std::uniform_real_distribution<_IntType>& __d2) 01930 { return !(__d1 == __d2); } 01931 01932 /** 01933 * @brief Inserts a %uniform_real_distribution random number 01934 * distribution @p __x into the output stream @p __os. 01935 * 01936 * @param __os An output stream. 01937 * @param __x A %uniform_real_distribution random number distribution. 01938 * 01939 * @returns The output stream with the state of @p __x inserted or in 01940 * an error state. 01941 */ 01942 template<typename _RealType, typename _CharT, typename _Traits> 01943 std::basic_ostream<_CharT, _Traits>& 01944 operator<<(std::basic_ostream<_CharT, _Traits>&, 01945 const std::uniform_real_distribution<_RealType>&); 01946 01947 /** 01948 * @brief Extracts a %uniform_real_distribution random number distribution 01949 * @p __x from the input stream @p __is. 01950 * 01951 * @param __is An input stream. 01952 * @param __x A %uniform_real_distribution random number generator engine. 01953 * 01954 * @returns The input stream with @p __x extracted or in an error state. 01955 */ 01956 template<typename _RealType, typename _CharT, typename _Traits> 01957 std::basic_istream<_CharT, _Traits>& 01958 operator>>(std::basic_istream<_CharT, _Traits>&, 01959 std::uniform_real_distribution<_RealType>&); 01960 01961 /* @} */ // group random_distributions_uniform 01962 01963 /** 01964 * @addtogroup random_distributions_normal Normal Distributions 01965 * @ingroup random_distributions 01966 * @{ 01967 */ 01968 01969 /** 01970 * @brief A normal continuous distribution for random numbers. 01971 * 01972 * The formula for the normal probability density function is 01973 * @f[ 01974 * p(x|\mu,\sigma) = \frac{1}{\sigma \sqrt{2 \pi}} 01975 * e^{- \frac{{x - \mu}^ {2}}{2 \sigma ^ {2}} } 01976 * @f] 01977 */ 01978 template<typename _RealType = double> 01979 class normal_distribution 01980 { 01981 static_assert(std::is_floating_point<_RealType>::value, 01982 "template argument not a floating point type"); 01983 01984 public: 01985 /** The type of the range of the distribution. */ 01986 typedef _RealType result_type; 01987 /** Parameter type. */ 01988 struct param_type 01989 { 01990 typedef normal_distribution<_RealType> distribution_type; 01991 01992 explicit 01993 param_type(_RealType __mean = _RealType(0), 01994 _RealType __stddev = _RealType(1)) 01995 : _M_mean(__mean), _M_stddev(__stddev) 01996 { 01997 _GLIBCXX_DEBUG_ASSERT(_M_stddev > _RealType(0)); 01998 } 01999 02000 _RealType 02001 mean() const 02002 { return _M_mean; } 02003 02004 _RealType 02005 stddev() const 02006 { return _M_stddev; } 02007 02008 friend bool 02009 operator==(const param_type& __p1, const param_type& __p2) 02010 { return (__p1._M_mean == __p2._M_mean 02011 && __p1._M_stddev == __p2._M_stddev); } 02012 02013 private: 02014 _RealType _M_mean; 02015 _RealType _M_stddev; 02016 }; 02017 02018 public: 02019 /** 02020 * Constructs a normal distribution with parameters @f$mean@f$ and 02021 * standard deviation. 02022 */ 02023 explicit 02024 normal_distribution(result_type __mean = result_type(0), 02025 result_type __stddev = result_type(1)) 02026 : _M_param(__mean, __stddev), _M_saved_available(false) 02027 { } 02028 02029 explicit 02030 normal_distribution(const param_type& __p) 02031 : _M_param(__p), _M_saved_available(false) 02032 { } 02033 02034 /** 02035 * @brief Resets the distribution state. 02036 */ 02037 void 02038 reset() 02039 { _M_saved_available = false; } 02040 02041 /** 02042 * @brief Returns the mean of the distribution. 02043 */ 02044 _RealType 02045 mean() const 02046 { return _M_param.mean(); } 02047 02048 /** 02049 * @brief Returns the standard deviation of the distribution. 02050 */ 02051 _RealType 02052 stddev() const 02053 { return _M_param.stddev(); } 02054 02055 /** 02056 * @brief Returns the parameter set of the distribution. 02057 */ 02058 param_type 02059 param() const 02060 { return _M_param; } 02061 02062 /** 02063 * @brief Sets the parameter set of the distribution. 02064 * @param __param The new parameter set of the distribution. 02065 */ 02066 void 02067 param(const param_type& __param) 02068 { _M_param = __param; } 02069 02070 /** 02071 * @brief Returns the greatest lower bound value of the distribution. 02072 */ 02073 result_type 02074 min() const 02075 { return std::numeric_limits<result_type>::min(); } 02076 02077 /** 02078 * @brief Returns the least upper bound value of the distribution. 02079 */ 02080 result_type 02081 max() const 02082 { return std::numeric_limits<result_type>::max(); } 02083 02084 /** 02085 * @brief Generating functions. 02086 */ 02087 template<typename _UniformRandomNumberGenerator> 02088 result_type 02089 operator()(_UniformRandomNumberGenerator& __urng) 02090 { return this->operator()(__urng, _M_param); } 02091 02092 template<typename _UniformRandomNumberGenerator> 02093 result_type 02094 operator()(_UniformRandomNumberGenerator& __urng, 02095 const param_type& __p); 02096 02097 /** 02098 * @brief Return true if two normal distributions have 02099 * the same parameters and the sequences that would 02100 * be generated are equal. 02101 */ 02102 template<typename _RealType1> 02103 friend bool 02104 operator==(const std::normal_distribution<_RealType1>& __d1, 02105 const std::normal_distribution<_RealType1>& __d2); 02106 02107 /** 02108 * @brief Inserts a %normal_distribution random number distribution 02109 * @p __x into the output stream @p __os. 02110 * 02111 * @param __os An output stream. 02112 * @param __x A %normal_distribution random number distribution. 02113 * 02114 * @returns The output stream with the state of @p __x inserted or in 02115 * an error state. 02116 */ 02117 template<typename _RealType1, typename _CharT, typename _Traits> 02118 friend std::basic_ostream<_CharT, _Traits>& 02119 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 02120 const std::normal_distribution<_RealType1>& __x); 02121 02122 /** 02123 * @brief Extracts a %normal_distribution random number distribution 02124 * @p __x from the input stream @p __is. 02125 * 02126 * @param __is An input stream. 02127 * @param __x A %normal_distribution random number generator engine. 02128 * 02129 * @returns The input stream with @p __x extracted or in an error 02130 * state. 02131 */ 02132 template<typename _RealType1, typename _CharT, typename _Traits> 02133 friend std::basic_istream<_CharT, _Traits>& 02134 operator>>(std::basic_istream<_CharT, _Traits>& __is, 02135 std::normal_distribution<_RealType1>& __x); 02136 02137 private: 02138 param_type _M_param; 02139 result_type _M_saved; 02140 bool _M_saved_available; 02141 }; 02142 02143 /** 02144 * @brief Return true if two normal distributions are different. 02145 */ 02146 template<typename _RealType> 02147 inline bool 02148 operator!=(const std::normal_distribution<_RealType>& __d1, 02149 const std::normal_distribution<_RealType>& __d2) 02150 { return !(__d1 == __d2); } 02151 02152 02153 /** 02154 * @brief A lognormal_distribution random number distribution. 02155 * 02156 * The formula for the normal probability mass function is 02157 * @f[ 02158 * p(x|m,s) = \frac{1}{sx\sqrt{2\pi}} 02159 * \exp{-\frac{(\ln{x} - m)^2}{2s^2}} 02160 * @f] 02161 */ 02162 template<typename _RealType = double> 02163 class lognormal_distribution 02164 { 02165 static_assert(std::is_floating_point<_RealType>::value, 02166 "template argument not a floating point type"); 02167 02168 public: 02169 /** The type of the range of the distribution. */ 02170 typedef _RealType result_type; 02171 /** Parameter type. */ 02172 struct param_type 02173 { 02174 typedef lognormal_distribution<_RealType> distribution_type; 02175 02176 explicit 02177 param_type(_RealType __m = _RealType(0), 02178 _RealType __s = _RealType(1)) 02179 : _M_m(__m), _M_s(__s) 02180 { } 02181 02182 _RealType 02183 m() const 02184 { return _M_m; } 02185 02186 _RealType 02187 s() const 02188 { return _M_s; } 02189 02190 friend bool 02191 operator==(const param_type& __p1, const param_type& __p2) 02192 { return __p1._M_m == __p2._M_m && __p1._M_s == __p2._M_s; } 02193 02194 private: 02195 _RealType _M_m; 02196 _RealType _M_s; 02197 }; 02198 02199 explicit 02200 lognormal_distribution(_RealType __m = _RealType(0), 02201 _RealType __s = _RealType(1)) 02202 : _M_param(__m, __s), _M_nd() 02203 { } 02204 02205 explicit 02206 lognormal_distribution(const param_type& __p) 02207 : _M_param(__p), _M_nd() 02208 { } 02209 02210 /** 02211 * Resets the distribution state. 02212 */ 02213 void 02214 reset() 02215 { _M_nd.reset(); } 02216 02217 /** 02218 * 02219 */ 02220 _RealType 02221 m() const 02222 { return _M_param.m(); } 02223 02224 _RealType 02225 s() const 02226 { return _M_param.s(); } 02227 02228 /** 02229 * @brief Returns the parameter set of the distribution. 02230 */ 02231 param_type 02232 param() const 02233 { return _M_param; } 02234 02235 /** 02236 * @brief Sets the parameter set of the distribution. 02237 * @param __param The new parameter set of the distribution. 02238 */ 02239 void 02240 param(const param_type& __param) 02241 { _M_param = __param; } 02242 02243 /** 02244 * @brief Returns the greatest lower bound value of the distribution. 02245 */ 02246 result_type 02247 min() const 02248 { return result_type(0); } 02249 02250 /** 02251 * @brief Returns the least upper bound value of the distribution. 02252 */ 02253 result_type 02254 max() const 02255 { return std::numeric_limits<result_type>::max(); } 02256 02257 /** 02258 * @brief Generating functions. 02259 */ 02260 template<typename _UniformRandomNumberGenerator> 02261 result_type 02262 operator()(_UniformRandomNumberGenerator& __urng) 02263 { return this->operator()(__urng, _M_param); } 02264 02265 template<typename _UniformRandomNumberGenerator> 02266 result_type 02267 operator()(_UniformRandomNumberGenerator& __urng, 02268 const param_type& __p) 02269 { return std::exp(__p.s() * _M_nd(__urng) + __p.m()); } 02270 02271 /** 02272 * @brief Return true if two lognormal distributions have 02273 * the same parameters and the sequences that would 02274 * be generated are equal. 02275 */ 02276 friend bool 02277 operator==(const lognormal_distribution& __d1, 02278 const lognormal_distribution& __d2) 02279 { return (__d1._M_param == __d2._M_param 02280 && __d1._M_nd == __d2._M_nd); } 02281 02282 /** 02283 * @brief Inserts a %lognormal_distribution random number distribution 02284 * @p __x into the output stream @p __os. 02285 * 02286 * @param __os An output stream. 02287 * @param __x A %lognormal_distribution random number distribution. 02288 * 02289 * @returns The output stream with the state of @p __x inserted or in 02290 * an error state. 02291 */ 02292 template<typename _RealType1, typename _CharT, typename _Traits> 02293 friend std::basic_ostream<_CharT, _Traits>& 02294 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 02295 const std::lognormal_distribution<_RealType1>& __x); 02296 02297 /** 02298 * @brief Extracts a %lognormal_distribution random number distribution 02299 * @p __x from the input stream @p __is. 02300 * 02301 * @param __is An input stream. 02302 * @param __x A %lognormal_distribution random number 02303 * generator engine. 02304 * 02305 * @returns The input stream with @p __x extracted or in an error state. 02306 */ 02307 template<typename _RealType1, typename _CharT, typename _Traits> 02308 friend std::basic_istream<_CharT, _Traits>& 02309 operator>>(std::basic_istream<_CharT, _Traits>& __is, 02310 std::lognormal_distribution<_RealType1>& __x); 02311 02312 private: 02313 param_type _M_param; 02314 02315 std::normal_distribution<result_type> _M_nd; 02316 }; 02317 02318 /** 02319 * @brief Return true if two lognormal distributions are different. 02320 */ 02321 template<typename _RealType> 02322 inline bool 02323 operator!=(const std::lognormal_distribution<_RealType>& __d1, 02324 const std::lognormal_distribution<_RealType>& __d2) 02325 { return !(__d1 == __d2); } 02326 02327 02328 /** 02329 * @brief A gamma continuous distribution for random numbers. 02330 * 02331 * The formula for the gamma probability density function is: 02332 * @f[ 02333 * p(x|\alpha,\beta) = \frac{1}{\beta\Gamma(\alpha)} 02334 * (x/\beta)^{\alpha - 1} e^{-x/\beta} 02335 * @f] 02336 */ 02337 template<typename _RealType = double> 02338 class gamma_distribution 02339 { 02340 static_assert(std::is_floating_point<_RealType>::value, 02341 "template argument not a floating point type"); 02342 02343 public: 02344 /** The type of the range of the distribution. */ 02345 typedef _RealType result_type; 02346 /** Parameter type. */ 02347 struct param_type 02348 { 02349 typedef gamma_distribution<_RealType> distribution_type; 02350 friend class gamma_distribution<_RealType>; 02351 02352 explicit 02353 param_type(_RealType __alpha_val = _RealType(1), 02354 _RealType __beta_val = _RealType(1)) 02355 : _M_alpha(__alpha_val), _M_beta(__beta_val) 02356 { 02357 _GLIBCXX_DEBUG_ASSERT(_M_alpha > _RealType(0)); 02358 _M_initialize(); 02359 } 02360 02361 _RealType 02362 alpha() const 02363 { return _M_alpha; } 02364 02365 _RealType 02366 beta() const 02367 { return _M_beta; } 02368 02369 friend bool 02370 operator==(const param_type& __p1, const param_type& __p2) 02371 { return (__p1._M_alpha == __p2._M_alpha 02372 && __p1._M_beta == __p2._M_beta); } 02373 02374 private: 02375 void 02376 _M_initialize(); 02377 02378 _RealType _M_alpha; 02379 _RealType _M_beta; 02380 02381 _RealType _M_malpha, _M_a2; 02382 }; 02383 02384 public: 02385 /** 02386 * @brief Constructs a gamma distribution with parameters 02387 * @f$\alpha@f$ and @f$\beta@f$. 02388 */ 02389 explicit 02390 gamma_distribution(_RealType __alpha_val = _RealType(1), 02391 _RealType __beta_val = _RealType(1)) 02392 : _M_param(__alpha_val, __beta_val), _M_nd() 02393 { } 02394 02395 explicit 02396 gamma_distribution(const param_type& __p) 02397 : _M_param(__p), _M_nd() 02398 { } 02399 02400 /** 02401 * @brief Resets the distribution state. 02402 */ 02403 void 02404 reset() 02405 { _M_nd.reset(); } 02406 02407 /** 02408 * @brief Returns the @f$\alpha@f$ of the distribution. 02409 */ 02410 _RealType 02411 alpha() const 02412 { return _M_param.alpha(); } 02413 02414 /** 02415 * @brief Returns the @f$\beta@f$ of the distribution. 02416 */ 02417 _RealType 02418 beta() const 02419 { return _M_param.beta(); } 02420 02421 /** 02422 * @brief Returns the parameter set of the distribution. 02423 */ 02424 param_type 02425 param() const 02426 { return _M_param; } 02427 02428 /** 02429 * @brief Sets the parameter set of the distribution. 02430 * @param __param The new parameter set of the distribution. 02431 */ 02432 void 02433 param(const param_type& __param) 02434 { _M_param = __param; } 02435 02436 /** 02437 * @brief Returns the greatest lower bound value of the distribution. 02438 */ 02439 result_type 02440 min() const 02441 { return result_type(0); } 02442 02443 /** 02444 * @brief Returns the least upper bound value of the distribution. 02445 */ 02446 result_type 02447 max() const 02448 { return std::numeric_limits<result_type>::max(); } 02449 02450 /** 02451 * @brief Generating functions. 02452 */ 02453 template<typename _UniformRandomNumberGenerator> 02454 result_type 02455 operator()(_UniformRandomNumberGenerator& __urng) 02456 { return this->operator()(__urng, _M_param); } 02457 02458 template<typename _UniformRandomNumberGenerator> 02459 result_type 02460 operator()(_UniformRandomNumberGenerator& __urng, 02461 const param_type& __p); 02462 02463 /** 02464 * @brief Return true if two gamma distributions have the same 02465 * parameters and the sequences that would be generated 02466 * are equal. 02467 */ 02468 friend bool 02469 operator==(const gamma_distribution& __d1, 02470 const gamma_distribution& __d2) 02471 { return (__d1._M_param == __d2._M_param 02472 && __d1._M_nd == __d2._M_nd); } 02473 02474 /** 02475 * @brief Inserts a %gamma_distribution random number distribution 02476 * @p __x into the output stream @p __os. 02477 * 02478 * @param __os An output stream. 02479 * @param __x A %gamma_distribution random number distribution. 02480 * 02481 * @returns The output stream with the state of @p __x inserted or in 02482 * an error state. 02483 */ 02484 template<typename _RealType1, typename _CharT, typename _Traits> 02485 friend std::basic_ostream<_CharT, _Traits>& 02486 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 02487 const std::gamma_distribution<_RealType1>& __x); 02488 02489 /** 02490 * @brief Extracts a %gamma_distribution random number distribution 02491 * @p __x from the input stream @p __is. 02492 * 02493 * @param __is An input stream. 02494 * @param __x A %gamma_distribution random number generator engine. 02495 * 02496 * @returns The input stream with @p __x extracted or in an error state. 02497 */ 02498 template<typename _RealType1, typename _CharT, typename _Traits> 02499 friend std::basic_istream<_CharT, _Traits>& 02500 operator>>(std::basic_istream<_CharT, _Traits>& __is, 02501 std::gamma_distribution<_RealType1>& __x); 02502 02503 private: 02504 param_type _M_param; 02505 02506 std::normal_distribution<result_type> _M_nd; 02507 }; 02508 02509 /** 02510 * @brief Return true if two gamma distributions are different. 02511 */ 02512 template<typename _RealType> 02513 inline bool 02514 operator!=(const std::gamma_distribution<_RealType>& __d1, 02515 const std::gamma_distribution<_RealType>& __d2) 02516 { return !(__d1 == __d2); } 02517 02518 02519 /** 02520 * @brief A chi_squared_distribution random number distribution. 02521 * 02522 * The formula for the normal probability mass function is 02523 * @f$p(x|n) = \frac{x^{(n/2) - 1}e^{-x/2}}{\Gamma(n/2) 2^{n/2}}@f$ 02524 */ 02525 template<typename _RealType = double> 02526 class chi_squared_distribution 02527 { 02528 static_assert(std::is_floating_point<_RealType>::value, 02529 "template argument not a floating point type"); 02530 02531 public: 02532 /** The type of the range of the distribution. */ 02533 typedef _RealType result_type; 02534 /** Parameter type. */ 02535 struct param_type 02536 { 02537 typedef chi_squared_distribution<_RealType> distribution_type; 02538 02539 explicit 02540 param_type(_RealType __n = _RealType(1)) 02541 : _M_n(__n) 02542 { } 02543 02544 _RealType 02545 n() const 02546 { return _M_n; } 02547 02548 friend bool 02549 operator==(const param_type& __p1, const param_type& __p2) 02550 { return __p1._M_n == __p2._M_n; } 02551 02552 private: 02553 _RealType _M_n; 02554 }; 02555 02556 explicit 02557 chi_squared_distribution(_RealType __n = _RealType(1)) 02558 : _M_param(__n), _M_gd(__n / 2) 02559 { } 02560 02561 explicit 02562 chi_squared_distribution(const param_type& __p) 02563 : _M_param(__p), _M_gd(__p.n() / 2) 02564 { } 02565 02566 /** 02567 * @brief Resets the distribution state. 02568 */ 02569 void 02570 reset() 02571 { _M_gd.reset(); } 02572 02573 /** 02574 * 02575 */ 02576 _RealType 02577 n() const 02578 { return _M_param.n(); } 02579 02580 /** 02581 * @brief Returns the parameter set of the distribution. 02582 */ 02583 param_type 02584 param() const 02585 { return _M_param; } 02586 02587 /** 02588 * @brief Sets the parameter set of the distribution. 02589 * @param __param The new parameter set of the distribution. 02590 */ 02591 void 02592 param(const param_type& __param) 02593 { _M_param = __param; } 02594 02595 /** 02596 * @brief Returns the greatest lower bound value of the distribution. 02597 */ 02598 result_type 02599 min() const 02600 { return result_type(0); } 02601 02602 /** 02603 * @brief Returns the least upper bound value of the distribution. 02604 */ 02605 result_type 02606 max() const 02607 { return std::numeric_limits<result_type>::max(); } 02608 02609 /** 02610 * @brief Generating functions. 02611 */ 02612 template<typename _UniformRandomNumberGenerator> 02613 result_type 02614 operator()(_UniformRandomNumberGenerator& __urng) 02615 { return 2 * _M_gd(__urng); } 02616 02617 template<typename _UniformRandomNumberGenerator> 02618 result_type 02619 operator()(_UniformRandomNumberGenerator& __urng, 02620 const param_type& __p) 02621 { 02622 typedef typename std::gamma_distribution<result_type>::param_type 02623 param_type; 02624 return 2 * _M_gd(__urng, param_type(__p.n() / 2)); 02625 } 02626 02627 /** 02628 * @brief Return true if two Chi-squared distributions have 02629 * the same parameters and the sequences that would be 02630 * generated are equal. 02631 */ 02632 friend bool 02633 operator==(const chi_squared_distribution& __d1, 02634 const chi_squared_distribution& __d2) 02635 { return __d1._M_param == __d2._M_param && __d1._M_gd == __d2._M_gd; } 02636 02637 /** 02638 * @brief Inserts a %chi_squared_distribution random number distribution 02639 * @p __x into the output stream @p __os. 02640 * 02641 * @param __os An output stream. 02642 * @param __x A %chi_squared_distribution random number distribution. 02643 * 02644 * @returns The output stream with the state of @p __x inserted or in 02645 * an error state. 02646 */ 02647 template<typename _RealType1, typename _CharT, typename _Traits> 02648 friend std::basic_ostream<_CharT, _Traits>& 02649 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 02650 const std::chi_squared_distribution<_RealType1>& __x); 02651 02652 /** 02653 * @brief Extracts a %chi_squared_distribution random number distribution 02654 * @p __x from the input stream @p __is. 02655 * 02656 * @param __is An input stream. 02657 * @param __x A %chi_squared_distribution random number 02658 * generator engine. 02659 * 02660 * @returns The input stream with @p __x extracted or in an error state. 02661 */ 02662 template<typename _RealType1, typename _CharT, typename _Traits> 02663 friend std::basic_istream<_CharT, _Traits>& 02664 operator>>(std::basic_istream<_CharT, _Traits>& __is, 02665 std::chi_squared_distribution<_RealType1>& __x); 02666 02667 private: 02668 param_type _M_param; 02669 02670 std::gamma_distribution<result_type> _M_gd; 02671 }; 02672 02673 /** 02674 * @brief Return true if two Chi-squared distributions are different. 02675 */ 02676 template<typename _RealType> 02677 inline bool 02678 operator!=(const std::chi_squared_distribution<_RealType>& __d1, 02679 const std::chi_squared_distribution<_RealType>& __d2) 02680 { return !(__d1 == __d2); } 02681 02682 02683 /** 02684 * @brief A cauchy_distribution random number distribution. 02685 * 02686 * The formula for the normal probability mass function is 02687 * @f$p(x|a,b) = (\pi b (1 + (\frac{x-a}{b})^2))^{-1}@f$ 02688 */ 02689 template<typename _RealType = double> 02690 class cauchy_distribution 02691 { 02692 static_assert(std::is_floating_point<_RealType>::value, 02693 "template argument not a floating point type"); 02694 02695 public: 02696 /** The type of the range of the distribution. */ 02697 typedef _RealType result_type; 02698 /** Parameter type. */ 02699 struct param_type 02700 { 02701 typedef cauchy_distribution<_RealType> distribution_type; 02702 02703 explicit 02704 param_type(_RealType __a = _RealType(0), 02705 _RealType __b = _RealType(1)) 02706 : _M_a(__a), _M_b(__b) 02707 { } 02708 02709 _RealType 02710 a() const 02711 { return _M_a; } 02712 02713 _RealType 02714 b() const 02715 { return _M_b; } 02716 02717 friend bool 02718 operator==(const param_type& __p1, const param_type& __p2) 02719 { return __p1._M_a == __p2._M_a && __p1._M_b == __p2._M_b; } 02720 02721 private: 02722 _RealType _M_a; 02723 _RealType _M_b; 02724 }; 02725 02726 explicit 02727 cauchy_distribution(_RealType __a = _RealType(0), 02728 _RealType __b = _RealType(1)) 02729 : _M_param(__a, __b) 02730 { } 02731 02732 explicit 02733 cauchy_distribution(const param_type& __p) 02734 : _M_param(__p) 02735 { } 02736 02737 /** 02738 * @brief Resets the distribution state. 02739 */ 02740 void 02741 reset() 02742 { } 02743 02744 /** 02745 * 02746 */ 02747 _RealType 02748 a() const 02749 { return _M_param.a(); } 02750 02751 _RealType 02752 b() const 02753 { return _M_param.b(); } 02754 02755 /** 02756 * @brief Returns the parameter set of the distribution. 02757 */ 02758 param_type 02759 param() const 02760 { return _M_param; } 02761 02762 /** 02763 * @brief Sets the parameter set of the distribution. 02764 * @param __param The new parameter set of the distribution. 02765 */ 02766 void 02767 param(const param_type& __param) 02768 { _M_param = __param; } 02769 02770 /** 02771 * @brief Returns the greatest lower bound value of the distribution. 02772 */ 02773 result_type 02774 min() const 02775 { return std::numeric_limits<result_type>::min(); } 02776 02777 /** 02778 * @brief Returns the least upper bound value of the distribution. 02779 */ 02780 result_type 02781 max() const 02782 { return std::numeric_limits<result_type>::max(); } 02783 02784 /** 02785 * @brief Generating functions. 02786 */ 02787 template<typename _UniformRandomNumberGenerator> 02788 result_type 02789 operator()(_UniformRandomNumberGenerator& __urng) 02790 { return this->operator()(__urng, _M_param); } 02791 02792 template<typename _UniformRandomNumberGenerator> 02793 result_type 02794 operator()(_UniformRandomNumberGenerator& __urng, 02795 const param_type& __p); 02796 02797 /** 02798 * @brief Return true if two Cauchy distributions have 02799 * the same parameters. 02800 */ 02801 friend bool 02802 operator==(const cauchy_distribution& __d1, 02803 const cauchy_distribution& __d2) 02804 { return __d1._M_param == __d2._M_param; } 02805 02806 private: 02807 param_type _M_param; 02808 }; 02809 02810 /** 02811 * @brief Return true if two Cauchy distributions have 02812 * different parameters. 02813 */ 02814 template<typename _RealType> 02815 inline bool 02816 operator!=(const std::cauchy_distribution<_RealType>& __d1, 02817 const std::cauchy_distribution<_RealType>& __d2) 02818 { return !(__d1 == __d2); } 02819 02820 /** 02821 * @brief Inserts a %cauchy_distribution random number distribution 02822 * @p __x into the output stream @p __os. 02823 * 02824 * @param __os An output stream. 02825 * @param __x A %cauchy_distribution random number distribution. 02826 * 02827 * @returns The output stream with the state of @p __x inserted or in 02828 * an error state. 02829 */ 02830 template<typename _RealType, typename _CharT, typename _Traits> 02831 std::basic_ostream<_CharT, _Traits>& 02832 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 02833 const std::cauchy_distribution<_RealType>& __x); 02834 02835 /** 02836 * @brief Extracts a %cauchy_distribution random number distribution 02837 * @p __x from the input stream @p __is. 02838 * 02839 * @param __is An input stream. 02840 * @param __x A %cauchy_distribution random number 02841 * generator engine. 02842 * 02843 * @returns The input stream with @p __x extracted or in an error state. 02844 */ 02845 template<typename _RealType, typename _CharT, typename _Traits> 02846 std::basic_istream<_CharT, _Traits>& 02847 operator>>(std::basic_istream<_CharT, _Traits>& __is, 02848 std::cauchy_distribution<_RealType>& __x); 02849 02850 02851 /** 02852 * @brief A fisher_f_distribution random number distribution. 02853 * 02854 * The formula for the normal probability mass function is 02855 * @f[ 02856 * p(x|m,n) = \frac{\Gamma((m+n)/2)}{\Gamma(m/2)\Gamma(n/2)} 02857 * (\frac{m}{n})^{m/2} x^{(m/2)-1} 02858 * (1 + \frac{mx}{n})^{-(m+n)/2} 02859 * @f] 02860 */ 02861 template<typename _RealType = double> 02862 class fisher_f_distribution 02863 { 02864 static_assert(std::is_floating_point<_RealType>::value, 02865 "template argument not a floating point type"); 02866 02867 public: 02868 /** The type of the range of the distribution. */ 02869 typedef _RealType result_type; 02870 /** Parameter type. */ 02871 struct param_type 02872 { 02873 typedef fisher_f_distribution<_RealType> distribution_type; 02874 02875 explicit 02876 param_type(_RealType __m = _RealType(1), 02877 _RealType __n = _RealType(1)) 02878 : _M_m(__m), _M_n(__n) 02879 { } 02880 02881 _RealType 02882 m() const 02883 { return _M_m; } 02884 02885 _RealType 02886 n() const 02887 { return _M_n; } 02888 02889 friend bool 02890 operator==(const param_type& __p1, const param_type& __p2) 02891 { return __p1._M_m == __p2._M_m && __p1._M_n == __p2._M_n; } 02892 02893 private: 02894 _RealType _M_m; 02895 _RealType _M_n; 02896 }; 02897 02898 explicit 02899 fisher_f_distribution(_RealType __m = _RealType(1), 02900 _RealType __n = _RealType(1)) 02901 : _M_param(__m, __n), _M_gd_x(__m / 2), _M_gd_y(__n / 2) 02902 { } 02903 02904 explicit 02905 fisher_f_distribution(const param_type& __p) 02906 : _M_param(__p), _M_gd_x(__p.m() / 2), _M_gd_y(__p.n() / 2) 02907 { } 02908 02909 /** 02910 * @brief Resets the distribution state. 02911 */ 02912 void 02913 reset() 02914 { 02915 _M_gd_x.reset(); 02916 _M_gd_y.reset(); 02917 } 02918 02919 /** 02920 * 02921 */ 02922 _RealType 02923 m() const 02924 { return _M_param.m(); } 02925 02926 _RealType 02927 n() const 02928 { return _M_param.n(); } 02929 02930 /** 02931 * @brief Returns the parameter set of the distribution. 02932 */ 02933 param_type 02934 param() const 02935 { return _M_param; } 02936 02937 /** 02938 * @brief Sets the parameter set of the distribution. 02939 * @param __param The new parameter set of the distribution. 02940 */ 02941 void 02942 param(const param_type& __param) 02943 { _M_param = __param; } 02944 02945 /** 02946 * @brief Returns the greatest lower bound value of the distribution. 02947 */ 02948 result_type 02949 min() const 02950 { return result_type(0); } 02951 02952 /** 02953 * @brief Returns the least upper bound value of the distribution. 02954 */ 02955 result_type 02956 max() const 02957 { return std::numeric_limits<result_type>::max(); } 02958 02959 /** 02960 * @brief Generating functions. 02961 */ 02962 template<typename _UniformRandomNumberGenerator> 02963 result_type 02964 operator()(_UniformRandomNumberGenerator& __urng) 02965 { return (_M_gd_x(__urng) * n()) / (_M_gd_y(__urng) * m()); } 02966 02967 template<typename _UniformRandomNumberGenerator> 02968 result_type 02969 operator()(_UniformRandomNumberGenerator& __urng, 02970 const param_type& __p) 02971 { 02972 typedef typename std::gamma_distribution<result_type>::param_type 02973 param_type; 02974 return ((_M_gd_x(__urng, param_type(__p.m() / 2)) * n()) 02975 / (_M_gd_y(__urng, param_type(__p.n() / 2)) * m())); 02976 } 02977 02978 /** 02979 * @brief Return true if two Fisher f distributions have 02980 * the same parameters and the sequences that would 02981 * be generated are equal. 02982 */ 02983 friend bool 02984 operator==(const fisher_f_distribution& __d1, 02985 const fisher_f_distribution& __d2) 02986 { return (__d1._M_param == __d2._M_param 02987 && __d1._M_gd_x == __d2._M_gd_x 02988 && __d1._M_gd_y == __d2._M_gd_y); } 02989 02990 /** 02991 * @brief Inserts a %fisher_f_distribution random number distribution 02992 * @p __x into the output stream @p __os. 02993 * 02994 * @param __os An output stream. 02995 * @param __x A %fisher_f_distribution random number distribution. 02996 * 02997 * @returns The output stream with the state of @p __x inserted or in 02998 * an error state. 02999 */ 03000 template<typename _RealType1, typename _CharT, typename _Traits> 03001 friend std::basic_ostream<_CharT, _Traits>& 03002 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 03003 const std::fisher_f_distribution<_RealType1>& __x); 03004 03005 /** 03006 * @brief Extracts a %fisher_f_distribution random number distribution 03007 * @p __x from the input stream @p __is. 03008 * 03009 * @param __is An input stream. 03010 * @param __x A %fisher_f_distribution random number 03011 * generator engine. 03012 * 03013 * @returns The input stream with @p __x extracted or in an error state. 03014 */ 03015 template<typename _RealType1, typename _CharT, typename _Traits> 03016 friend std::basic_istream<_CharT, _Traits>& 03017 operator>>(std::basic_istream<_CharT, _Traits>& __is, 03018 std::fisher_f_distribution<_RealType1>& __x); 03019 03020 private: 03021 param_type _M_param; 03022 03023 std::gamma_distribution<result_type> _M_gd_x, _M_gd_y; 03024 }; 03025 03026 /** 03027 * @brief Return true if two Fisher f distributions are diferent. 03028 */ 03029 template<typename _RealType> 03030 inline bool 03031 operator!=(const std::fisher_f_distribution<_RealType>& __d1, 03032 const std::fisher_f_distribution<_RealType>& __d2) 03033 { return !(__d1 == __d2); } 03034 03035 /** 03036 * @brief A student_t_distribution random number distribution. 03037 * 03038 * The formula for the normal probability mass function is: 03039 * @f[ 03040 * p(x|n) = \frac{1}{\sqrt(n\pi)} \frac{\Gamma((n+1)/2)}{\Gamma(n/2)} 03041 * (1 + \frac{x^2}{n}) ^{-(n+1)/2} 03042 * @f] 03043 */ 03044 template<typename _RealType = double> 03045 class student_t_distribution 03046 { 03047 static_assert(std::is_floating_point<_RealType>::value, 03048 "template argument not a floating point type"); 03049 03050 public: 03051 /** The type of the range of the distribution. */ 03052 typedef _RealType result_type; 03053 /** Parameter type. */ 03054 struct param_type 03055 { 03056 typedef student_t_distribution<_RealType> distribution_type; 03057 03058 explicit 03059 param_type(_RealType __n = _RealType(1)) 03060 : _M_n(__n) 03061 { } 03062 03063 _RealType 03064 n() const 03065 { return _M_n; } 03066 03067 friend bool 03068 operator==(const param_type& __p1, const param_type& __p2) 03069 { return __p1._M_n == __p2._M_n; } 03070 03071 private: 03072 _RealType _M_n; 03073 }; 03074 03075 explicit 03076 student_t_distribution(_RealType __n = _RealType(1)) 03077 : _M_param(__n), _M_nd(), _M_gd(__n / 2, 2) 03078 { } 03079 03080 explicit 03081 student_t_distribution(const param_type& __p) 03082 : _M_param(__p), _M_nd(), _M_gd(__p.n() / 2, 2) 03083 { } 03084 03085 /** 03086 * @brief Resets the distribution state. 03087 */ 03088 void 03089 reset() 03090 { 03091 _M_nd.reset(); 03092 _M_gd.reset(); 03093 } 03094 03095 /** 03096 * 03097 */ 03098 _RealType 03099 n() const 03100 { return _M_param.n(); } 03101 03102 /** 03103 * @brief Returns the parameter set of the distribution. 03104 */ 03105 param_type 03106 param() const 03107 { return _M_param; } 03108 03109 /** 03110 * @brief Sets the parameter set of the distribution. 03111 * @param __param The new parameter set of the distribution. 03112 */ 03113 void 03114 param(const param_type& __param) 03115 { _M_param = __param; } 03116 03117 /** 03118 * @brief Returns the greatest lower bound value of the distribution. 03119 */ 03120 result_type 03121 min() const 03122 { return std::numeric_limits<result_type>::min(); } 03123 03124 /** 03125 * @brief Returns the least upper bound value of the distribution. 03126 */ 03127 result_type 03128 max() const 03129 { return std::numeric_limits<result_type>::max(); } 03130 03131 /** 03132 * @brief Generating functions. 03133 */ 03134 template<typename _UniformRandomNumberGenerator> 03135 result_type 03136 operator()(_UniformRandomNumberGenerator& __urng) 03137 { return _M_nd(__urng) * std::sqrt(n() / _M_gd(__urng)); } 03138 03139 template<typename _UniformRandomNumberGenerator> 03140 result_type 03141 operator()(_UniformRandomNumberGenerator& __urng, 03142 const param_type& __p) 03143 { 03144 typedef typename std::gamma_distribution<result_type>::param_type 03145 param_type; 03146 03147 const result_type __g = _M_gd(__urng, param_type(__p.n() / 2, 2)); 03148 return _M_nd(__urng) * std::sqrt(__p.n() / __g); 03149 } 03150 03151 /** 03152 * @brief Return true if two Student t distributions have 03153 * the same parameters and the sequences that would 03154 * be generated are equal. 03155 */ 03156 friend bool 03157 operator==(const student_t_distribution& __d1, 03158 const student_t_distribution& __d2) 03159 { return (__d1._M_param == __d2._M_param 03160 && __d1._M_nd == __d2._M_nd && __d1._M_gd == __d2._M_gd); } 03161 03162 /** 03163 * @brief Inserts a %student_t_distribution random number distribution 03164 * @p __x into the output stream @p __os. 03165 * 03166 * @param __os An output stream. 03167 * @param __x A %student_t_distribution random number distribution. 03168 * 03169 * @returns The output stream with the state of @p __x inserted or in 03170 * an error state. 03171 */ 03172 template<typename _RealType1, typename _CharT, typename _Traits> 03173 friend std::basic_ostream<_CharT, _Traits>& 03174 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 03175 const std::student_t_distribution<_RealType1>& __x); 03176 03177 /** 03178 * @brief Extracts a %student_t_distribution random number distribution 03179 * @p __x from the input stream @p __is. 03180 * 03181 * @param __is An input stream. 03182 * @param __x A %student_t_distribution random number 03183 * generator engine. 03184 * 03185 * @returns The input stream with @p __x extracted or in an error state. 03186 */ 03187 template<typename _RealType1, typename _CharT, typename _Traits> 03188 friend std::basic_istream<_CharT, _Traits>& 03189 operator>>(std::basic_istream<_CharT, _Traits>& __is, 03190 std::student_t_distribution<_RealType1>& __x); 03191 03192 private: 03193 param_type _M_param; 03194 03195 std::normal_distribution<result_type> _M_nd; 03196 std::gamma_distribution<result_type> _M_gd; 03197 }; 03198 03199 /** 03200 * @brief Return true if two Student t distributions are different. 03201 */ 03202 template<typename _RealType> 03203 inline bool 03204 operator!=(const std::student_t_distribution<_RealType>& __d1, 03205 const std::student_t_distribution<_RealType>& __d2) 03206 { return !(__d1 == __d2); } 03207 03208 03209 /* @} */ // group random_distributions_normal 03210 03211 /** 03212 * @addtogroup random_distributions_bernoulli Bernoulli Distributions 03213 * @ingroup random_distributions 03214 * @{ 03215 */ 03216 03217 /** 03218 * @brief A Bernoulli random number distribution. 03219 * 03220 * Generates a sequence of true and false values with likelihood @f$p@f$ 03221 * that true will come up and @f$(1 - p)@f$ that false will appear. 03222 */ 03223 class bernoulli_distribution 03224 { 03225 public: 03226 /** The type of the range of the distribution. */ 03227 typedef bool result_type; 03228 /** Parameter type. */ 03229 struct param_type 03230 { 03231 typedef bernoulli_distribution distribution_type; 03232 03233 explicit 03234 param_type(double __p = 0.5) 03235 : _M_p(__p) 03236 { 03237 _GLIBCXX_DEBUG_ASSERT((_M_p >= 0.0) && (_M_p <= 1.0)); 03238 } 03239 03240 double 03241 p() const 03242 { return _M_p; } 03243 03244 friend bool 03245 operator==(const param_type& __p1, const param_type& __p2) 03246 { return __p1._M_p == __p2._M_p; } 03247 03248 private: 03249 double _M_p; 03250 }; 03251 03252 public: 03253 /** 03254 * @brief Constructs a Bernoulli distribution with likelihood @p p. 03255 * 03256 * @param __p [IN] The likelihood of a true result being returned. 03257 * Must be in the interval @f$[0, 1]@f$. 03258 */ 03259 explicit 03260 bernoulli_distribution(double __p = 0.5) 03261 : _M_param(__p) 03262 { } 03263 03264 explicit 03265 bernoulli_distribution(const param_type& __p) 03266 : _M_param(__p) 03267 { } 03268 03269 /** 03270 * @brief Resets the distribution state. 03271 * 03272 * Does nothing for a Bernoulli distribution. 03273 */ 03274 void 03275 reset() { } 03276 03277 /** 03278 * @brief Returns the @p p parameter of the distribution. 03279 */ 03280 double 03281 p() const 03282 { return _M_param.p(); } 03283 03284 /** 03285 * @brief Returns the parameter set of the distribution. 03286 */ 03287 param_type 03288 param() const 03289 { return _M_param; } 03290 03291 /** 03292 * @brief Sets the parameter set of the distribution. 03293 * @param __param The new parameter set of the distribution. 03294 */ 03295 void 03296 param(const param_type& __param) 03297 { _M_param = __param; } 03298 03299 /** 03300 * @brief Returns the greatest lower bound value of the distribution. 03301 */ 03302 result_type 03303 min() const 03304 { return std::numeric_limits<result_type>::min(); } 03305 03306 /** 03307 * @brief Returns the least upper bound value of the distribution. 03308 */ 03309 result_type 03310 max() const 03311 { return std::numeric_limits<result_type>::max(); } 03312 03313 /** 03314 * @brief Generating functions. 03315 */ 03316 template<typename _UniformRandomNumberGenerator> 03317 result_type 03318 operator()(_UniformRandomNumberGenerator& __urng) 03319 { return this->operator()(__urng, _M_param); } 03320 03321 template<typename _UniformRandomNumberGenerator> 03322 result_type 03323 operator()(_UniformRandomNumberGenerator& __urng, 03324 const param_type& __p) 03325 { 03326 __detail::_Adaptor<_UniformRandomNumberGenerator, double> 03327 __aurng(__urng); 03328 if ((__aurng() - __aurng.min()) 03329 < __p.p() * (__aurng.max() - __aurng.min())) 03330 return true; 03331 return false; 03332 } 03333 03334 /** 03335 * @brief Return true if two Bernoulli distributions have 03336 * the same parameters. 03337 */ 03338 friend bool 03339 operator==(const bernoulli_distribution& __d1, 03340 const bernoulli_distribution& __d2) 03341 { return __d1._M_param == __d2._M_param; } 03342 03343 private: 03344 param_type _M_param; 03345 }; 03346 03347 /** 03348 * @brief Return true if two Bernoulli distributions have 03349 * different parameters. 03350 */ 03351 inline bool 03352 operator!=(const std::bernoulli_distribution& __d1, 03353 const std::bernoulli_distribution& __d2) 03354 { return !(__d1 == __d2); } 03355 03356 /** 03357 * @brief Inserts a %bernoulli_distribution random number distribution 03358 * @p __x into the output stream @p __os. 03359 * 03360 * @param __os An output stream. 03361 * @param __x A %bernoulli_distribution random number distribution. 03362 * 03363 * @returns The output stream with the state of @p __x inserted or in 03364 * an error state. 03365 */ 03366 template<typename _CharT, typename _Traits> 03367 std::basic_ostream<_CharT, _Traits>& 03368 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 03369 const std::bernoulli_distribution& __x); 03370 03371 /** 03372 * @brief Extracts a %bernoulli_distribution random number distribution 03373 * @p __x from the input stream @p __is. 03374 * 03375 * @param __is An input stream. 03376 * @param __x A %bernoulli_distribution random number generator engine. 03377 * 03378 * @returns The input stream with @p __x extracted or in an error state. 03379 */ 03380 template<typename _CharT, typename _Traits> 03381 std::basic_istream<_CharT, _Traits>& 03382 operator>>(std::basic_istream<_CharT, _Traits>& __is, 03383 std::bernoulli_distribution& __x) 03384 { 03385 double __p; 03386 __is >> __p; 03387 __x.param(bernoulli_distribution::param_type(__p)); 03388 return __is; 03389 } 03390 03391 03392 /** 03393 * @brief A discrete binomial random number distribution. 03394 * 03395 * The formula for the binomial probability density function is 03396 * @f$p(i|t,p) = \binom{n}{i} p^i (1 - p)^{t - i}@f$ where @f$t@f$ 03397 * and @f$p@f$ are the parameters of the distribution. 03398 */ 03399 template<typename _IntType = int> 03400 class binomial_distribution 03401 { 03402 static_assert(std::is_integral<_IntType>::value, 03403 "template argument not an integral type"); 03404 03405 public: 03406 /** The type of the range of the distribution. */ 03407 typedef _IntType result_type; 03408 /** Parameter type. */ 03409 struct param_type 03410 { 03411 typedef binomial_distribution<_IntType> distribution_type; 03412 friend class binomial_distribution<_IntType>; 03413 03414 explicit 03415 param_type(_IntType __t = _IntType(1), double __p = 0.5) 03416 : _M_t(__t), _M_p(__p) 03417 { 03418 _GLIBCXX_DEBUG_ASSERT((_M_t >= _IntType(0)) 03419 && (_M_p >= 0.0) 03420 && (_M_p <= 1.0)); 03421 _M_initialize(); 03422 } 03423 03424 _IntType 03425 t() const 03426 { return _M_t; } 03427 03428 double 03429 p() const 03430 { return _M_p; } 03431 03432 friend bool 03433 operator==(const param_type& __p1, const param_type& __p2) 03434 { return __p1._M_t == __p2._M_t && __p1._M_p == __p2._M_p; } 03435 03436 private: 03437 void 03438 _M_initialize(); 03439 03440 _IntType _M_t; 03441 double _M_p; 03442 03443 double _M_q; 03444 #if _GLIBCXX_USE_C99_MATH_TR1 03445 double _M_d1, _M_d2, _M_s1, _M_s2, _M_c, 03446 _M_a1, _M_a123, _M_s, _M_lf, _M_lp1p; 03447 #endif 03448 bool _M_easy; 03449 }; 03450 03451 // constructors and member function 03452 explicit 03453 binomial_distribution(_IntType __t = _IntType(1), 03454 double __p = 0.5) 03455 : _M_param(__t, __p), _M_nd() 03456 { } 03457 03458 explicit 03459 binomial_distribution(const param_type& __p) 03460 : _M_param(__p), _M_nd() 03461 { } 03462 03463 /** 03464 * @brief Resets the distribution state. 03465 */ 03466 void 03467 reset() 03468 { _M_nd.reset(); } 03469 03470 /** 03471 * @brief Returns the distribution @p t parameter. 03472 */ 03473 _IntType 03474 t() const 03475 { return _M_param.t(); } 03476 03477 /** 03478 * @brief Returns the distribution @p p parameter. 03479 */ 03480 double 03481 p() const 03482 { return _M_param.p(); } 03483 03484 /** 03485 * @brief Returns the parameter set of the distribution. 03486 */ 03487 param_type 03488 param() const 03489 { return _M_param; } 03490 03491 /** 03492 * @brief Sets the parameter set of the distribution. 03493 * @param __param The new parameter set of the distribution. 03494 */ 03495 void 03496 param(const param_type& __param) 03497 { _M_param = __param; } 03498 03499 /** 03500 * @brief Returns the greatest lower bound value of the distribution. 03501 */ 03502 result_type 03503 min() const 03504 { return 0; } 03505 03506 /** 03507 * @brief Returns the least upper bound value of the distribution. 03508 */ 03509 result_type 03510 max() const 03511 { return _M_param.t(); } 03512 03513 /** 03514 * @brief Generating functions. 03515 */ 03516 template<typename _UniformRandomNumberGenerator> 03517 result_type 03518 operator()(_UniformRandomNumberGenerator& __urng) 03519 { return this->operator()(__urng, _M_param); } 03520 03521 template<typename _UniformRandomNumberGenerator> 03522 result_type 03523 operator()(_UniformRandomNumberGenerator& __urng, 03524 const param_type& __p); 03525 03526 /** 03527 * @brief Return true if two binomial distributions have 03528 * the same parameters and the sequences that would 03529 * be generated are equal. 03530 */ 03531 friend bool 03532 operator==(const binomial_distribution& __d1, 03533 const binomial_distribution& __d2) 03534 #ifdef _GLIBCXX_USE_C99_MATH_TR1 03535 { return __d1._M_param == __d2._M_param && __d1._M_nd == __d2._M_nd; } 03536 #else 03537 { return __d1._M_param == __d2._M_param; } 03538 #endif 03539 03540 /** 03541 * @brief Inserts a %binomial_distribution random number distribution 03542 * @p __x into the output stream @p __os. 03543 * 03544 * @param __os An output stream. 03545 * @param __x A %binomial_distribution random number distribution. 03546 * 03547 * @returns The output stream with the state of @p __x inserted or in 03548 * an error state. 03549 */ 03550 template<typename _IntType1, 03551 typename _CharT, typename _Traits> 03552 friend std::basic_ostream<_CharT, _Traits>& 03553 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 03554 const std::binomial_distribution<_IntType1>& __x); 03555 03556 /** 03557 * @brief Extracts a %binomial_distribution random number distribution 03558 * @p __x from the input stream @p __is. 03559 * 03560 * @param __is An input stream. 03561 * @param __x A %binomial_distribution random number generator engine. 03562 * 03563 * @returns The input stream with @p __x extracted or in an error 03564 * state. 03565 */ 03566 template<typename _IntType1, 03567 typename _CharT, typename _Traits> 03568 friend std::basic_istream<_CharT, _Traits>& 03569 operator>>(std::basic_istream<_CharT, _Traits>& __is, 03570 std::binomial_distribution<_IntType1>& __x); 03571 03572 private: 03573 template<typename _UniformRandomNumberGenerator> 03574 result_type 03575 _M_waiting(_UniformRandomNumberGenerator& __urng, _IntType __t); 03576 03577 param_type _M_param; 03578 03579 // NB: Unused when _GLIBCXX_USE_C99_MATH_TR1 is undefined. 03580 std::normal_distribution<double> _M_nd; 03581 }; 03582 03583 /** 03584 * @brief Return true if two binomial distributions are different. 03585 */ 03586 template<typename _IntType> 03587 inline bool 03588 operator!=(const std::binomial_distribution<_IntType>& __d1, 03589 const std::binomial_distribution<_IntType>& __d2) 03590 { return !(__d1 == __d2); } 03591 03592 03593 /** 03594 * @brief A discrete geometric random number distribution. 03595 * 03596 * The formula for the geometric probability density function is 03597 * @f$p(i|p) = p(1 - p)^{i}@f$ where @f$p@f$ is the parameter of the 03598 * distribution. 03599 */ 03600 template<typename _IntType = int> 03601 class geometric_distribution 03602 { 03603 static_assert(std::is_integral<_IntType>::value, 03604 "template argument not an integral type"); 03605 03606 public: 03607 /** The type of the range of the distribution. */ 03608 typedef _IntType result_type; 03609 /** Parameter type. */ 03610 struct param_type 03611 { 03612 typedef geometric_distribution<_IntType> distribution_type; 03613 friend class geometric_distribution<_IntType>; 03614 03615 explicit 03616 param_type(double __p = 0.5) 03617 : _M_p(__p) 03618 { 03619 _GLIBCXX_DEBUG_ASSERT((_M_p > 0.0) && (_M_p < 1.0)); 03620 _M_initialize(); 03621 } 03622 03623 double 03624 p() const 03625 { return _M_p; } 03626 03627 friend bool 03628 operator==(const param_type& __p1, const param_type& __p2) 03629 { return __p1._M_p == __p2._M_p; } 03630 03631 private: 03632 void 03633 _M_initialize() 03634 { _M_log_1_p = std::log(1.0 - _M_p); } 03635 03636 double _M_p; 03637 03638 double _M_log_1_p; 03639 }; 03640 03641 // constructors and member function 03642 explicit 03643 geometric_distribution(double __p = 0.5) 03644 : _M_param(__p) 03645 { } 03646 03647 explicit 03648 geometric_distribution(const param_type& __p) 03649 : _M_param(__p) 03650 { } 03651 03652 /** 03653 * @brief Resets the distribution state. 03654 * 03655 * Does nothing for the geometric distribution. 03656 */ 03657 void 03658 reset() { } 03659 03660 /** 03661 * @brief Returns the distribution parameter @p p. 03662 */ 03663 double 03664 p() const 03665 { return _M_param.p(); } 03666 03667 /** 03668 * @brief Returns the parameter set of the distribution. 03669 */ 03670 param_type 03671 param() const 03672 { return _M_param; } 03673 03674 /** 03675 * @brief Sets the parameter set of the distribution. 03676 * @param __param The new parameter set of the distribution. 03677 */ 03678 void 03679 param(const param_type& __param) 03680 { _M_param = __param; } 03681 03682 /** 03683 * @brief Returns the greatest lower bound value of the distribution. 03684 */ 03685 result_type 03686 min() const 03687 { return 0; } 03688 03689 /** 03690 * @brief Returns the least upper bound value of the distribution. 03691 */ 03692 result_type 03693 max() const 03694 { return std::numeric_limits<result_type>::max(); } 03695 03696 /** 03697 * @brief Generating functions. 03698 */ 03699 template<typename _UniformRandomNumberGenerator> 03700 result_type 03701 operator()(_UniformRandomNumberGenerator& __urng) 03702 { return this->operator()(__urng, _M_param); } 03703 03704 template<typename _UniformRandomNumberGenerator> 03705 result_type 03706 operator()(_UniformRandomNumberGenerator& __urng, 03707 const param_type& __p); 03708 03709 /** 03710 * @brief Return true if two geometric distributions have 03711 * the same parameters. 03712 */ 03713 friend bool 03714 operator==(const geometric_distribution& __d1, 03715 const geometric_distribution& __d2) 03716 { return __d1._M_param == __d2._M_param; } 03717 03718 private: 03719 param_type _M_param; 03720 }; 03721 03722 /** 03723 * @brief Return true if two geometric distributions have 03724 * different parameters. 03725 */ 03726 template<typename _IntType> 03727 inline bool 03728 operator!=(const std::geometric_distribution<_IntType>& __d1, 03729 const std::geometric_distribution<_IntType>& __d2) 03730 { return !(__d1 == __d2); } 03731 03732 /** 03733 * @brief Inserts a %geometric_distribution random number distribution 03734 * @p __x into the output stream @p __os. 03735 * 03736 * @param __os An output stream. 03737 * @param __x A %geometric_distribution random number distribution. 03738 * 03739 * @returns The output stream with the state of @p __x inserted or in 03740 * an error state. 03741 */ 03742 template<typename _IntType, 03743 typename _CharT, typename _Traits> 03744 std::basic_ostream<_CharT, _Traits>& 03745 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 03746 const std::geometric_distribution<_IntType>& __x); 03747 03748 /** 03749 * @brief Extracts a %geometric_distribution random number distribution 03750 * @p __x from the input stream @p __is. 03751 * 03752 * @param __is An input stream. 03753 * @param __x A %geometric_distribution random number generator engine. 03754 * 03755 * @returns The input stream with @p __x extracted or in an error state. 03756 */ 03757 template<typename _IntType, 03758 typename _CharT, typename _Traits> 03759 std::basic_istream<_CharT, _Traits>& 03760 operator>>(std::basic_istream<_CharT, _Traits>& __is, 03761 std::geometric_distribution<_IntType>& __x); 03762 03763 03764 /** 03765 * @brief A negative_binomial_distribution random number distribution. 03766 * 03767 * The formula for the negative binomial probability mass function is 03768 * @f$p(i) = \binom{n}{i} p^i (1 - p)^{t - i}@f$ where @f$t@f$ 03769 * and @f$p@f$ are the parameters of the distribution. 03770 */ 03771 template<typename _IntType = int> 03772 class negative_binomial_distribution 03773 { 03774 static_assert(std::is_integral<_IntType>::value, 03775 "template argument not an integral type"); 03776 03777 public: 03778 /** The type of the range of the distribution. */ 03779 typedef _IntType result_type; 03780 /** Parameter type. */ 03781 struct param_type 03782 { 03783 typedef negative_binomial_distribution<_IntType> distribution_type; 03784 03785 explicit 03786 param_type(_IntType __k = 1, double __p = 0.5) 03787 : _M_k(__k), _M_p(__p) 03788 { 03789 _GLIBCXX_DEBUG_ASSERT((_M_k > 0) && (_M_p > 0.0) && (_M_p <= 1.0)); 03790 } 03791 03792 _IntType 03793 k() const 03794 { return _M_k; } 03795 03796 double 03797 p() const 03798 { return _M_p; } 03799 03800 friend bool 03801 operator==(const param_type& __p1, const param_type& __p2) 03802 { return __p1._M_k == __p2._M_k && __p1._M_p == __p2._M_p; } 03803 03804 private: 03805 _IntType _M_k; 03806 double _M_p; 03807 }; 03808 03809 explicit 03810 negative_binomial_distribution(_IntType __k = 1, double __p = 0.5) 03811 : _M_param(__k, __p), _M_gd(__k, (1.0 - __p) / __p) 03812 { } 03813 03814 explicit 03815 negative_binomial_distribution(const param_type& __p) 03816 : _M_param(__p), _M_gd(__p.k(), (1.0 - __p.p()) / __p.p()) 03817 { } 03818 03819 /** 03820 * @brief Resets the distribution state. 03821 */ 03822 void 03823 reset() 03824 { _M_gd.reset(); } 03825 03826 /** 03827 * @brief Return the @f$k@f$ parameter of the distribution. 03828 */ 03829 _IntType 03830 k() const 03831 { return _M_param.k(); } 03832 03833 /** 03834 * @brief Return the @f$p@f$ parameter of the distribution. 03835 */ 03836 double 03837 p() const 03838 { return _M_param.p(); } 03839 03840 /** 03841 * @brief Returns the parameter set of the distribution. 03842 */ 03843 param_type 03844 param() const 03845 { return _M_param; } 03846 03847 /** 03848 * @brief Sets the parameter set of the distribution. 03849 * @param __param The new parameter set of the distribution. 03850 */ 03851 void 03852 param(const param_type& __param) 03853 { _M_param = __param; } 03854 03855 /** 03856 * @brief Returns the greatest lower bound value of the distribution. 03857 */ 03858 result_type 03859 min() const 03860 { return result_type(0); } 03861 03862 /** 03863 * @brief Returns the least upper bound value of the distribution. 03864 */ 03865 result_type 03866 max() const 03867 { return std::numeric_limits<result_type>::max(); } 03868 03869 /** 03870 * @brief Generating functions. 03871 */ 03872 template<typename _UniformRandomNumberGenerator> 03873 result_type 03874 operator()(_UniformRandomNumberGenerator& __urng); 03875 03876 template<typename _UniformRandomNumberGenerator> 03877 result_type 03878 operator()(_UniformRandomNumberGenerator& __urng, 03879 const param_type& __p); 03880 03881 /** 03882 * @brief Return true if two negative binomial distributions have 03883 * the same parameters and the sequences that would be 03884 * generated are equal. 03885 */ 03886 friend bool 03887 operator==(const negative_binomial_distribution& __d1, 03888 const negative_binomial_distribution& __d2) 03889 { return __d1._M_param == __d2._M_param && __d1._M_gd == __d2._M_gd; } 03890 03891 /** 03892 * @brief Inserts a %negative_binomial_distribution random 03893 * number distribution @p __x into the output stream @p __os. 03894 * 03895 * @param __os An output stream. 03896 * @param __x A %negative_binomial_distribution random number 03897 * distribution. 03898 * 03899 * @returns The output stream with the state of @p __x inserted or in 03900 * an error state. 03901 */ 03902 template<typename _IntType1, typename _CharT, typename _Traits> 03903 friend std::basic_ostream<_CharT, _Traits>& 03904 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 03905 const std::negative_binomial_distribution<_IntType1>& __x); 03906 03907 /** 03908 * @brief Extracts a %negative_binomial_distribution random number 03909 * distribution @p __x from the input stream @p __is. 03910 * 03911 * @param __is An input stream. 03912 * @param __x A %negative_binomial_distribution random number 03913 * generator engine. 03914 * 03915 * @returns The input stream with @p __x extracted or in an error state. 03916 */ 03917 template<typename _IntType1, typename _CharT, typename _Traits> 03918 friend std::basic_istream<_CharT, _Traits>& 03919 operator>>(std::basic_istream<_CharT, _Traits>& __is, 03920 std::negative_binomial_distribution<_IntType1>& __x); 03921 03922 private: 03923 param_type _M_param; 03924 03925 std::gamma_distribution<double> _M_gd; 03926 }; 03927 03928 /** 03929 * @brief Return true if two negative binomial distributions are different. 03930 */ 03931 template<typename _IntType> 03932 inline bool 03933 operator!=(const std::negative_binomial_distribution<_IntType>& __d1, 03934 const std::negative_binomial_distribution<_IntType>& __d2) 03935 { return !(__d1 == __d2); } 03936 03937 03938 /* @} */ // group random_distributions_bernoulli 03939 03940 /** 03941 * @addtogroup random_distributions_poisson Poisson Distributions 03942 * @ingroup random_distributions 03943 * @{ 03944 */ 03945 03946 /** 03947 * @brief A discrete Poisson random number distribution. 03948 * 03949 * The formula for the Poisson probability density function is 03950 * @f$p(i|\mu) = \frac{\mu^i}{i!} e^{-\mu}@f$ where @f$\mu@f$ is the 03951 * parameter of the distribution. 03952 */ 03953 template<typename _IntType = int> 03954 class poisson_distribution 03955 { 03956 static_assert(std::is_integral<_IntType>::value, 03957 "template argument not an integral type"); 03958 03959 public: 03960 /** The type of the range of the distribution. */ 03961 typedef _IntType result_type; 03962 /** Parameter type. */ 03963 struct param_type 03964 { 03965 typedef poisson_distribution<_IntType> distribution_type; 03966 friend class poisson_distribution<_IntType>; 03967 03968 explicit 03969 param_type(double __mean = 1.0) 03970 : _M_mean(__mean) 03971 { 03972 _GLIBCXX_DEBUG_ASSERT(_M_mean > 0.0); 03973 _M_initialize(); 03974 } 03975 03976 double 03977 mean() const 03978 { return _M_mean; } 03979 03980 friend bool 03981 operator==(const param_type& __p1, const param_type& __p2) 03982 { return __p1._M_mean == __p2._M_mean; } 03983 03984 private: 03985 // Hosts either log(mean) or the threshold of the simple method. 03986 void 03987 _M_initialize(); 03988 03989 double _M_mean; 03990 03991 double _M_lm_thr; 03992 #if _GLIBCXX_USE_C99_MATH_TR1 03993 double _M_lfm, _M_sm, _M_d, _M_scx, _M_1cx, _M_c2b, _M_cb; 03994 #endif 03995 }; 03996 03997 // constructors and member function 03998 explicit 03999 poisson_distribution(double __mean = 1.0) 04000 : _M_param(__mean), _M_nd() 04001 { } 04002 04003 explicit 04004 poisson_distribution(const param_type& __p) 04005 : _M_param(__p), _M_nd() 04006 { } 04007 04008 /** 04009 * @brief Resets the distribution state. 04010 */ 04011 void 04012 reset() 04013 { _M_nd.reset(); } 04014 04015 /** 04016 * @brief Returns the distribution parameter @p mean. 04017 */ 04018 double 04019 mean() const 04020 { return _M_param.mean(); } 04021 04022 /** 04023 * @brief Returns the parameter set of the distribution. 04024 */ 04025 param_type 04026 param() const 04027 { return _M_param; } 04028 04029 /** 04030 * @brief Sets the parameter set of the distribution. 04031 * @param __param The new parameter set of the distribution. 04032 */ 04033 void 04034 param(const param_type& __param) 04035 { _M_param = __param; } 04036 04037 /** 04038 * @brief Returns the greatest lower bound value of the distribution. 04039 */ 04040 result_type 04041 min() const 04042 { return 0; } 04043 04044 /** 04045 * @brief Returns the least upper bound value of the distribution. 04046 */ 04047 result_type 04048 max() const 04049 { return std::numeric_limits<result_type>::max(); } 04050 04051 /** 04052 * @brief Generating functions. 04053 */ 04054 template<typename _UniformRandomNumberGenerator> 04055 result_type 04056 operator()(_UniformRandomNumberGenerator& __urng) 04057 { return this->operator()(__urng, _M_param); } 04058 04059 template<typename _UniformRandomNumberGenerator> 04060 result_type 04061 operator()(_UniformRandomNumberGenerator& __urng, 04062 const param_type& __p); 04063 04064 /** 04065 * @brief Return true if two Poisson distributions have the same 04066 * parameters and the sequences that would be generated 04067 * are equal. 04068 */ 04069 friend bool 04070 operator==(const poisson_distribution& __d1, 04071 const poisson_distribution& __d2) 04072 #ifdef _GLIBCXX_USE_C99_MATH_TR1 04073 { return __d1._M_param == __d2._M_param && __d1._M_nd == __d2._M_nd; } 04074 #else 04075 { return __d1._M_param == __d2._M_param; } 04076 #endif 04077 04078 /** 04079 * @brief Inserts a %poisson_distribution random number distribution 04080 * @p __x into the output stream @p __os. 04081 * 04082 * @param __os An output stream. 04083 * @param __x A %poisson_distribution random number distribution. 04084 * 04085 * @returns The output stream with the state of @p __x inserted or in 04086 * an error state. 04087 */ 04088 template<typename _IntType1, typename _CharT, typename _Traits> 04089 friend std::basic_ostream<_CharT, _Traits>& 04090 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 04091 const std::poisson_distribution<_IntType1>& __x); 04092 04093 /** 04094 * @brief Extracts a %poisson_distribution random number distribution 04095 * @p __x from the input stream @p __is. 04096 * 04097 * @param __is An input stream. 04098 * @param __x A %poisson_distribution random number generator engine. 04099 * 04100 * @returns The input stream with @p __x extracted or in an error 04101 * state. 04102 */ 04103 template<typename _IntType1, typename _CharT, typename _Traits> 04104 friend std::basic_istream<_CharT, _Traits>& 04105 operator>>(std::basic_istream<_CharT, _Traits>& __is, 04106 std::poisson_distribution<_IntType1>& __x); 04107 04108 private: 04109 param_type _M_param; 04110 04111 // NB: Unused when _GLIBCXX_USE_C99_MATH_TR1 is undefined. 04112 std::normal_distribution<double> _M_nd; 04113 }; 04114 04115 /** 04116 * @brief Return true if two Poisson distributions are different. 04117 */ 04118 template<typename _IntType> 04119 inline bool 04120 operator!=(const std::poisson_distribution<_IntType>& __d1, 04121 const std::poisson_distribution<_IntType>& __d2) 04122 { return !(__d1 == __d2); } 04123 04124 04125 /** 04126 * @brief An exponential continuous distribution for random numbers. 04127 * 04128 * The formula for the exponential probability density function is 04129 * @f$p(x|\lambda) = \lambda e^{-\lambda x}@f$. 04130 * 04131 * <table border=1 cellpadding=10 cellspacing=0> 04132 * <caption align=top>Distribution Statistics</caption> 04133 * <tr><td>Mean</td><td>@f$\frac{1}{\lambda}@f$</td></tr> 04134 * <tr><td>Median</td><td>@f$\frac{\ln 2}{\lambda}@f$</td></tr> 04135 * <tr><td>Mode</td><td>@f$zero@f$</td></tr> 04136 * <tr><td>Range</td><td>@f$[0, \infty]@f$</td></tr> 04137 * <tr><td>Standard Deviation</td><td>@f$\frac{1}{\lambda}@f$</td></tr> 04138 * </table> 04139 */ 04140 template<typename _RealType = double> 04141 class exponential_distribution 04142 { 04143 static_assert(std::is_floating_point<_RealType>::value, 04144 "template argument not a floating point type"); 04145 04146 public: 04147 /** The type of the range of the distribution. */ 04148 typedef _RealType result_type; 04149 /** Parameter type. */ 04150 struct param_type 04151 { 04152 typedef exponential_distribution<_RealType> distribution_type; 04153 04154 explicit 04155 param_type(_RealType __lambda = _RealType(1)) 04156 : _M_lambda(__lambda) 04157 { 04158 _GLIBCXX_DEBUG_ASSERT(_M_lambda > _RealType(0)); 04159 } 04160 04161 _RealType 04162 lambda() const 04163 { return _M_lambda; } 04164 04165 friend bool 04166 operator==(const param_type& __p1, const param_type& __p2) 04167 { return __p1._M_lambda == __p2._M_lambda; } 04168 04169 private: 04170 _RealType _M_lambda; 04171 }; 04172 04173 public: 04174 /** 04175 * @brief Constructs an exponential distribution with inverse scale 04176 * parameter @f$\lambda@f$. 04177 */ 04178 explicit 04179 exponential_distribution(const result_type& __lambda = result_type(1)) 04180 : _M_param(__lambda) 04181 { } 04182 04183 explicit 04184 exponential_distribution(const param_type& __p) 04185 : _M_param(__p) 04186 { } 04187 04188 /** 04189 * @brief Resets the distribution state. 04190 * 04191 * Has no effect on exponential distributions. 04192 */ 04193 void 04194 reset() { } 04195 04196 /** 04197 * @brief Returns the inverse scale parameter of the distribution. 04198 */ 04199 _RealType 04200 lambda() const 04201 { return _M_param.lambda(); } 04202 04203 /** 04204 * @brief Returns the parameter set of the distribution. 04205 */ 04206 param_type 04207 param() const 04208 { return _M_param; } 04209 04210 /** 04211 * @brief Sets the parameter set of the distribution. 04212 * @param __param The new parameter set of the distribution. 04213 */ 04214 void 04215 param(const param_type& __param) 04216 { _M_param = __param; } 04217 04218 /** 04219 * @brief Returns the greatest lower bound value of the distribution. 04220 */ 04221 result_type 04222 min() const 04223 { return result_type(0); } 04224 04225 /** 04226 * @brief Returns the least upper bound value of the distribution. 04227 */ 04228 result_type 04229 max() const 04230 { return std::numeric_limits<result_type>::max(); } 04231 04232 /** 04233 * @brief Generating functions. 04234 */ 04235 template<typename _UniformRandomNumberGenerator> 04236 result_type 04237 operator()(_UniformRandomNumberGenerator& __urng) 04238 { return this->operator()(__urng, _M_param); } 04239 04240 template<typename _UniformRandomNumberGenerator> 04241 result_type 04242 operator()(_UniformRandomNumberGenerator& __urng, 04243 const param_type& __p) 04244 { 04245 __detail::_Adaptor<_UniformRandomNumberGenerator, result_type> 04246 __aurng(__urng); 04247 return -std::log(result_type(1) - __aurng()) / __p.lambda(); 04248 } 04249 04250 /** 04251 * @brief Return true if two exponential distributions have the same 04252 * parameters. 04253 */ 04254 friend bool 04255 operator==(const exponential_distribution& __d1, 04256 const exponential_distribution& __d2) 04257 { return __d1._M_param == __d2._M_param; } 04258 04259 private: 04260 param_type _M_param; 04261 }; 04262 04263 /** 04264 * @brief Return true if two exponential distributions have different 04265 * parameters. 04266 */ 04267 template<typename _RealType> 04268 inline bool 04269 operator!=(const std::exponential_distribution<_RealType>& __d1, 04270 const std::exponential_distribution<_RealType>& __d2) 04271 { return !(__d1 == __d2); } 04272 04273 /** 04274 * @brief Inserts a %exponential_distribution random number distribution 04275 * @p __x into the output stream @p __os. 04276 * 04277 * @param __os An output stream. 04278 * @param __x A %exponential_distribution random number distribution. 04279 * 04280 * @returns The output stream with the state of @p __x inserted or in 04281 * an error state. 04282 */ 04283 template<typename _RealType, typename _CharT, typename _Traits> 04284 std::basic_ostream<_CharT, _Traits>& 04285 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 04286 const std::exponential_distribution<_RealType>& __x); 04287 04288 /** 04289 * @brief Extracts a %exponential_distribution random number distribution 04290 * @p __x from the input stream @p __is. 04291 * 04292 * @param __is An input stream. 04293 * @param __x A %exponential_distribution random number 04294 * generator engine. 04295 * 04296 * @returns The input stream with @p __x extracted or in an error state. 04297 */ 04298 template<typename _RealType, typename _CharT, typename _Traits> 04299 std::basic_istream<_CharT, _Traits>& 04300 operator>>(std::basic_istream<_CharT, _Traits>& __is, 04301 std::exponential_distribution<_RealType>& __x); 04302 04303 04304 /** 04305 * @brief A weibull_distribution random number distribution. 04306 * 04307 * The formula for the normal probability density function is: 04308 * @f[ 04309 * p(x|\alpha,\beta) = \frac{\alpha}{\beta} (\frac{x}{\beta})^{\alpha-1} 04310 * \exp{(-(\frac{x}{\beta})^\alpha)} 04311 * @f] 04312 */ 04313 template<typename _RealType = double> 04314 class weibull_distribution 04315 { 04316 static_assert(std::is_floating_point<_RealType>::value, 04317 "template argument not a floating point type"); 04318 04319 public: 04320 /** The type of the range of the distribution. */ 04321 typedef _RealType result_type; 04322 /** Parameter type. */ 04323 struct param_type 04324 { 04325 typedef weibull_distribution<_RealType> distribution_type; 04326 04327 explicit 04328 param_type(_RealType __a = _RealType(1), 04329 _RealType __b = _RealType(1)) 04330 : _M_a(__a), _M_b(__b) 04331 { } 04332 04333 _RealType 04334 a() const 04335 { return _M_a; } 04336 04337 _RealType 04338 b() const 04339 { return _M_b; } 04340 04341 friend bool 04342 operator==(const param_type& __p1, const param_type& __p2) 04343 { return __p1._M_a == __p2._M_a && __p1._M_b == __p2._M_b; } 04344 04345 private: 04346 _RealType _M_a; 04347 _RealType _M_b; 04348 }; 04349 04350 explicit 04351 weibull_distribution(_RealType __a = _RealType(1), 04352 _RealType __b = _RealType(1)) 04353 : _M_param(__a, __b) 04354 { } 04355 04356 explicit 04357 weibull_distribution(const param_type& __p) 04358 : _M_param(__p) 04359 { } 04360 04361 /** 04362 * @brief Resets the distribution state. 04363 */ 04364 void 04365 reset() 04366 { } 04367 04368 /** 04369 * @brief Return the @f$a@f$ parameter of the distribution. 04370 */ 04371 _RealType 04372 a() const 04373 { return _M_param.a(); } 04374 04375 /** 04376 * @brief Return the @f$b@f$ parameter of the distribution. 04377 */ 04378 _RealType 04379 b() const 04380 { return _M_param.b(); } 04381 04382 /** 04383 * @brief Returns the parameter set of the distribution. 04384 */ 04385 param_type 04386 param() const 04387 { return _M_param; } 04388 04389 /** 04390 * @brief Sets the parameter set of the distribution. 04391 * @param __param The new parameter set of the distribution. 04392 */ 04393 void 04394 param(const param_type& __param) 04395 { _M_param = __param; } 04396 04397 /** 04398 * @brief Returns the greatest lower bound value of the distribution. 04399 */ 04400 result_type 04401 min() const 04402 { return result_type(0); } 04403 04404 /** 04405 * @brief Returns the least upper bound value of the distribution. 04406 */ 04407 result_type 04408 max() const 04409 { return std::numeric_limits<result_type>::max(); } 04410 04411 /** 04412 * @brief Generating functions. 04413 */ 04414 template<typename _UniformRandomNumberGenerator> 04415 result_type 04416 operator()(_UniformRandomNumberGenerator& __urng) 04417 { return this->operator()(__urng, _M_param); } 04418 04419 template<typename _UniformRandomNumberGenerator> 04420 result_type 04421 operator()(_UniformRandomNumberGenerator& __urng, 04422 const param_type& __p); 04423 04424 /** 04425 * @brief Return true if two Weibull distributions have the same 04426 * parameters. 04427 */ 04428 friend bool 04429 operator==(const weibull_distribution& __d1, 04430 const weibull_distribution& __d2) 04431 { return __d1._M_param == __d2._M_param; } 04432 04433 private: 04434 param_type _M_param; 04435 }; 04436 04437 /** 04438 * @brief Return true if two Weibull distributions have different 04439 * parameters. 04440 */ 04441 template<typename _RealType> 04442 inline bool 04443 operator!=(const std::weibull_distribution<_RealType>& __d1, 04444 const std::weibull_distribution<_RealType>& __d2) 04445 { return !(__d1 == __d2); } 04446 04447 /** 04448 * @brief Inserts a %weibull_distribution random number distribution 04449 * @p __x into the output stream @p __os. 04450 * 04451 * @param __os An output stream. 04452 * @param __x A %weibull_distribution random number distribution. 04453 * 04454 * @returns The output stream with the state of @p __x inserted or in 04455 * an error state. 04456 */ 04457 template<typename _RealType, typename _CharT, typename _Traits> 04458 std::basic_ostream<_CharT, _Traits>& 04459 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 04460 const std::weibull_distribution<_RealType>& __x); 04461 04462 /** 04463 * @brief Extracts a %weibull_distribution random number distribution 04464 * @p __x from the input stream @p __is. 04465 * 04466 * @param __is An input stream. 04467 * @param __x A %weibull_distribution random number 04468 * generator engine. 04469 * 04470 * @returns The input stream with @p __x extracted or in an error state. 04471 */ 04472 template<typename _RealType, typename _CharT, typename _Traits> 04473 std::basic_istream<_CharT, _Traits>& 04474 operator>>(std::basic_istream<_CharT, _Traits>& __is, 04475 std::weibull_distribution<_RealType>& __x); 04476 04477 04478 /** 04479 * @brief A extreme_value_distribution random number distribution. 04480 * 04481 * The formula for the normal probability mass function is 04482 * @f[ 04483 * p(x|a,b) = \frac{1}{b} 04484 * \exp( \frac{a-x}{b} - \exp(\frac{a-x}{b})) 04485 * @f] 04486 */ 04487 template<typename _RealType = double> 04488 class extreme_value_distribution 04489 { 04490 static_assert(std::is_floating_point<_RealType>::value, 04491 "template argument not a floating point type"); 04492 04493 public: 04494 /** The type of the range of the distribution. */ 04495 typedef _RealType result_type; 04496 /** Parameter type. */ 04497 struct param_type 04498 { 04499 typedef extreme_value_distribution<_RealType> distribution_type; 04500 04501 explicit 04502 param_type(_RealType __a = _RealType(0), 04503 _RealType __b = _RealType(1)) 04504 : _M_a(__a), _M_b(__b) 04505 { } 04506 04507 _RealType 04508 a() const 04509 { return _M_a; } 04510 04511 _RealType 04512 b() const 04513 { return _M_b; } 04514 04515 friend bool 04516 operator==(const param_type& __p1, const param_type& __p2) 04517 { return __p1._M_a == __p2._M_a && __p1._M_b == __p2._M_b; } 04518 04519 private: 04520 _RealType _M_a; 04521 _RealType _M_b; 04522 }; 04523 04524 explicit 04525 extreme_value_distribution(_RealType __a = _RealType(0), 04526 _RealType __b = _RealType(1)) 04527 : _M_param(__a, __b) 04528 { } 04529 04530 explicit 04531 extreme_value_distribution(const param_type& __p) 04532 : _M_param(__p) 04533 { } 04534 04535 /** 04536 * @brief Resets the distribution state. 04537 */ 04538 void 04539 reset() 04540 { } 04541 04542 /** 04543 * @brief Return the @f$a@f$ parameter of the distribution. 04544 */ 04545 _RealType 04546 a() const 04547 { return _M_param.a(); } 04548 04549 /** 04550 * @brief Return the @f$b@f$ parameter of the distribution. 04551 */ 04552 _RealType 04553 b() const 04554 { return _M_param.b(); } 04555 04556 /** 04557 * @brief Returns the parameter set of the distribution. 04558 */ 04559 param_type 04560 param() const 04561 { return _M_param; } 04562 04563 /** 04564 * @brief Sets the parameter set of the distribution. 04565 * @param __param The new parameter set of the distribution. 04566 */ 04567 void 04568 param(const param_type& __param) 04569 { _M_param = __param; } 04570 04571 /** 04572 * @brief Returns the greatest lower bound value of the distribution. 04573 */ 04574 result_type 04575 min() const 04576 { return std::numeric_limits<result_type>::min(); } 04577 04578 /** 04579 * @brief Returns the least upper bound value of the distribution. 04580 */ 04581 result_type 04582 max() const 04583 { return std::numeric_limits<result_type>::max(); } 04584 04585 /** 04586 * @brief Generating functions. 04587 */ 04588 template<typename _UniformRandomNumberGenerator> 04589 result_type 04590 operator()(_UniformRandomNumberGenerator& __urng) 04591 { return this->operator()(__urng, _M_param); } 04592 04593 template<typename _UniformRandomNumberGenerator> 04594 result_type 04595 operator()(_UniformRandomNumberGenerator& __urng, 04596 const param_type& __p); 04597 04598 /** 04599 * @brief Return true if two extreme value distributions have the same 04600 * parameters. 04601 */ 04602 friend bool 04603 operator==(const extreme_value_distribution& __d1, 04604 const extreme_value_distribution& __d2) 04605 { return __d1._M_param == __d2._M_param; } 04606 04607 private: 04608 param_type _M_param; 04609 }; 04610 04611 /** 04612 * @brief Return true if two extreme value distributions have different 04613 * parameters. 04614 */ 04615 template<typename _RealType> 04616 inline bool 04617 operator!=(const std::extreme_value_distribution<_RealType>& __d1, 04618 const std::extreme_value_distribution<_RealType>& __d2) 04619 { return !(__d1 == __d2); } 04620 04621 /** 04622 * @brief Inserts a %extreme_value_distribution random number distribution 04623 * @p __x into the output stream @p __os. 04624 * 04625 * @param __os An output stream. 04626 * @param __x A %extreme_value_distribution random number distribution. 04627 * 04628 * @returns The output stream with the state of @p __x inserted or in 04629 * an error state. 04630 */ 04631 template<typename _RealType, typename _CharT, typename _Traits> 04632 std::basic_ostream<_CharT, _Traits>& 04633 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 04634 const std::extreme_value_distribution<_RealType>& __x); 04635 04636 /** 04637 * @brief Extracts a %extreme_value_distribution random number 04638 * distribution @p __x from the input stream @p __is. 04639 * 04640 * @param __is An input stream. 04641 * @param __x A %extreme_value_distribution random number 04642 * generator engine. 04643 * 04644 * @returns The input stream with @p __x extracted or in an error state. 04645 */ 04646 template<typename _RealType, typename _CharT, typename _Traits> 04647 std::basic_istream<_CharT, _Traits>& 04648 operator>>(std::basic_istream<_CharT, _Traits>& __is, 04649 std::extreme_value_distribution<_RealType>& __x); 04650 04651 04652 /** 04653 * @brief A discrete_distribution random number distribution. 04654 * 04655 * The formula for the discrete probability mass function is 04656 * 04657 */ 04658 template<typename _IntType = int> 04659 class discrete_distribution 04660 { 04661 static_assert(std::is_integral<_IntType>::value, 04662 "template argument not an integral type"); 04663 04664 public: 04665 /** The type of the range of the distribution. */ 04666 typedef _IntType result_type; 04667 /** Parameter type. */ 04668 struct param_type 04669 { 04670 typedef discrete_distribution<_IntType> distribution_type; 04671 friend class discrete_distribution<_IntType>; 04672 04673 param_type() 04674 : _M_prob(), _M_cp() 04675 { } 04676 04677 template<typename _InputIterator> 04678 param_type(_InputIterator __wbegin, 04679 _InputIterator __wend) 04680 : _M_prob(__wbegin, __wend), _M_cp() 04681 { _M_initialize(); } 04682 04683 param_type(initializer_list<double> __wil) 04684 : _M_prob(__wil.begin(), __wil.end()), _M_cp() 04685 { _M_initialize(); } 04686 04687 template<typename _Func> 04688 param_type(size_t __nw, double __xmin, double __xmax, 04689 _Func __fw); 04690 04691 // See: http://cpp-next.com/archive/2010/10/implicit-move-must-go/ 04692 param_type(const param_type&) = default; 04693 param_type& operator=(const param_type&) = default; 04694 04695 std::vector<double> 04696 probabilities() const 04697 { return _M_prob.empty() ? std::vector<double>(1, 1.0) : _M_prob; } 04698 04699 friend bool 04700 operator==(const param_type& __p1, const param_type& __p2) 04701 { return __p1._M_prob == __p2._M_prob; } 04702 04703 private: 04704 void 04705 _M_initialize(); 04706 04707 std::vector<double> _M_prob; 04708 std::vector<double> _M_cp; 04709 }; 04710 04711 discrete_distribution() 04712 : _M_param() 04713 { } 04714 04715 template<typename _InputIterator> 04716 discrete_distribution(_InputIterator __wbegin, 04717 _InputIterator __wend) 04718 : _M_param(__wbegin, __wend) 04719 { } 04720 04721 discrete_distribution(initializer_list<double> __wl) 04722 : _M_param(__wl) 04723 { } 04724 04725 template<typename _Func> 04726 discrete_distribution(size_t __nw, double __xmin, double __xmax, 04727 _Func __fw) 04728 : _M_param(__nw, __xmin, __xmax, __fw) 04729 { } 04730 04731 explicit 04732 discrete_distribution(const param_type& __p) 04733 : _M_param(__p) 04734 { } 04735 04736 /** 04737 * @brief Resets the distribution state. 04738 */ 04739 void 04740 reset() 04741 { } 04742 04743 /** 04744 * @brief Returns the probabilities of the distribution. 04745 */ 04746 std::vector<double> 04747 probabilities() const 04748 { 04749 return _M_param._M_prob.empty() 04750 ? std::vector<double>(1, 1.0) : _M_param._M_prob; 04751 } 04752 04753 /** 04754 * @brief Returns the parameter set of the distribution. 04755 */ 04756 param_type 04757 param() const 04758 { return _M_param; } 04759 04760 /** 04761 * @brief Sets the parameter set of the distribution. 04762 * @param __param The new parameter set of the distribution. 04763 */ 04764 void 04765 param(const param_type& __param) 04766 { _M_param = __param; } 04767 04768 /** 04769 * @brief Returns the greatest lower bound value of the distribution. 04770 */ 04771 result_type 04772 min() const 04773 { return result_type(0); } 04774 04775 /** 04776 * @brief Returns the least upper bound value of the distribution. 04777 */ 04778 result_type 04779 max() const 04780 { 04781 return _M_param._M_prob.empty() 04782 ? result_type(0) : result_type(_M_param._M_prob.size() - 1); 04783 } 04784 04785 /** 04786 * @brief Generating functions. 04787 */ 04788 template<typename _UniformRandomNumberGenerator> 04789 result_type 04790 operator()(_UniformRandomNumberGenerator& __urng) 04791 { return this->operator()(__urng, _M_param); } 04792 04793 template<typename _UniformRandomNumberGenerator> 04794 result_type 04795 operator()(_UniformRandomNumberGenerator& __urng, 04796 const param_type& __p); 04797 04798 /** 04799 * @brief Return true if two discrete distributions have the same 04800 * parameters. 04801 */ 04802 friend bool 04803 operator==(const discrete_distribution& __d1, 04804 const discrete_distribution& __d2) 04805 { return __d1._M_param == __d2._M_param; } 04806 04807 /** 04808 * @brief Inserts a %discrete_distribution random number distribution 04809 * @p __x into the output stream @p __os. 04810 * 04811 * @param __os An output stream. 04812 * @param __x A %discrete_distribution random number distribution. 04813 * 04814 * @returns The output stream with the state of @p __x inserted or in 04815 * an error state. 04816 */ 04817 template<typename _IntType1, typename _CharT, typename _Traits> 04818 friend std::basic_ostream<_CharT, _Traits>& 04819 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 04820 const std::discrete_distribution<_IntType1>& __x); 04821 04822 /** 04823 * @brief Extracts a %discrete_distribution random number distribution 04824 * @p __x from the input stream @p __is. 04825 * 04826 * @param __is An input stream. 04827 * @param __x A %discrete_distribution random number 04828 * generator engine. 04829 * 04830 * @returns The input stream with @p __x extracted or in an error 04831 * state. 04832 */ 04833 template<typename _IntType1, typename _CharT, typename _Traits> 04834 friend std::basic_istream<_CharT, _Traits>& 04835 operator>>(std::basic_istream<_CharT, _Traits>& __is, 04836 std::discrete_distribution<_IntType1>& __x); 04837 04838 private: 04839 param_type _M_param; 04840 }; 04841 04842 /** 04843 * @brief Return true if two discrete distributions have different 04844 * parameters. 04845 */ 04846 template<typename _IntType> 04847 inline bool 04848 operator!=(const std::discrete_distribution<_IntType>& __d1, 04849 const std::discrete_distribution<_IntType>& __d2) 04850 { return !(__d1 == __d2); } 04851 04852 04853 /** 04854 * @brief A piecewise_constant_distribution random number distribution. 04855 * 04856 * The formula for the piecewise constant probability mass function is 04857 * 04858 */ 04859 template<typename _RealType = double> 04860 class piecewise_constant_distribution 04861 { 04862 static_assert(std::is_floating_point<_RealType>::value, 04863 "template argument not a floating point type"); 04864 04865 public: 04866 /** The type of the range of the distribution. */ 04867 typedef _RealType result_type; 04868 /** Parameter type. */ 04869 struct param_type 04870 { 04871 typedef piecewise_constant_distribution<_RealType> distribution_type; 04872 friend class piecewise_constant_distribution<_RealType>; 04873 04874 param_type() 04875 : _M_int(), _M_den(), _M_cp() 04876 { } 04877 04878 template<typename _InputIteratorB, typename _InputIteratorW> 04879 param_type(_InputIteratorB __bfirst, 04880 _InputIteratorB __bend, 04881 _InputIteratorW __wbegin); 04882 04883 template<typename _Func> 04884 param_type(initializer_list<_RealType> __bi, _Func __fw); 04885 04886 template<typename _Func> 04887 param_type(size_t __nw, _RealType __xmin, _RealType __xmax, 04888 _Func __fw); 04889 04890 // See: http://cpp-next.com/archive/2010/10/implicit-move-must-go/ 04891 param_type(const param_type&) = default; 04892 param_type& operator=(const param_type&) = default; 04893 04894 std::vector<_RealType> 04895 intervals() const 04896 { 04897 if (_M_int.empty()) 04898 { 04899 std::vector<_RealType> __tmp(2); 04900 __tmp[1] = _RealType(1); 04901 return __tmp; 04902 } 04903 else 04904 return _M_int; 04905 } 04906 04907 std::vector<double> 04908 densities() const 04909 { return _M_den.empty() ? std::vector<double>(1, 1.0) : _M_den; } 04910 04911 friend bool 04912 operator==(const param_type& __p1, const param_type& __p2) 04913 { return __p1._M_int == __p2._M_int && __p1._M_den == __p2._M_den; } 04914 04915 private: 04916 void 04917 _M_initialize(); 04918 04919 std::vector<_RealType> _M_int; 04920 std::vector<double> _M_den; 04921 std::vector<double> _M_cp; 04922 }; 04923 04924 explicit 04925 piecewise_constant_distribution() 04926 : _M_param() 04927 { } 04928 04929 template<typename _InputIteratorB, typename _InputIteratorW> 04930 piecewise_constant_distribution(_InputIteratorB __bfirst, 04931 _InputIteratorB __bend, 04932 _InputIteratorW __wbegin) 04933 : _M_param(__bfirst, __bend, __wbegin) 04934 { } 04935 04936 template<typename _Func> 04937 piecewise_constant_distribution(initializer_list<_RealType> __bl, 04938 _Func __fw) 04939 : _M_param(__bl, __fw) 04940 { } 04941 04942 template<typename _Func> 04943 piecewise_constant_distribution(size_t __nw, 04944 _RealType __xmin, _RealType __xmax, 04945 _Func __fw) 04946 : _M_param(__nw, __xmin, __xmax, __fw) 04947 { } 04948 04949 explicit 04950 piecewise_constant_distribution(const param_type& __p) 04951 : _M_param(__p) 04952 { } 04953 04954 /** 04955 * @brief Resets the distribution state. 04956 */ 04957 void 04958 reset() 04959 { } 04960 04961 /** 04962 * @brief Returns a vector of the intervals. 04963 */ 04964 std::vector<_RealType> 04965 intervals() const 04966 { 04967 if (_M_param._M_int.empty()) 04968 { 04969 std::vector<_RealType> __tmp(2); 04970 __tmp[1] = _RealType(1); 04971 return __tmp; 04972 } 04973 else 04974 return _M_param._M_int; 04975 } 04976 04977 /** 04978 * @brief Returns a vector of the probability densities. 04979 */ 04980 std::vector<double> 04981 densities() const 04982 { 04983 return _M_param._M_den.empty() 04984 ? std::vector<double>(1, 1.0) : _M_param._M_den; 04985 } 04986 04987 /** 04988 * @brief Returns the parameter set of the distribution. 04989 */ 04990 param_type 04991 param() const 04992 { return _M_param; } 04993 04994 /** 04995 * @brief Sets the parameter set of the distribution. 04996 * @param __param The new parameter set of the distribution. 04997 */ 04998 void 04999 param(const param_type& __param) 05000 { _M_param = __param; } 05001 05002 /** 05003 * @brief Returns the greatest lower bound value of the distribution. 05004 */ 05005 result_type 05006 min() const 05007 { 05008 return _M_param._M_int.empty() 05009 ? result_type(0) : _M_param._M_int.front(); 05010 } 05011 05012 /** 05013 * @brief Returns the least upper bound value of the distribution. 05014 */ 05015 result_type 05016 max() const 05017 { 05018 return _M_param._M_int.empty() 05019 ? result_type(1) : _M_param._M_int.back(); 05020 } 05021 05022 /** 05023 * @brief Generating functions. 05024 */ 05025 template<typename _UniformRandomNumberGenerator> 05026 result_type 05027 operator()(_UniformRandomNumberGenerator& __urng) 05028 { return this->operator()(__urng, _M_param); } 05029 05030 template<typename _UniformRandomNumberGenerator> 05031 result_type 05032 operator()(_UniformRandomNumberGenerator& __urng, 05033 const param_type& __p); 05034 05035 /** 05036 * @brief Return true if two piecewise constant distributions have the 05037 * same parameters. 05038 */ 05039 friend bool 05040 operator==(const piecewise_constant_distribution& __d1, 05041 const piecewise_constant_distribution& __d2) 05042 { return __d1._M_param == __d2._M_param; } 05043 05044 /** 05045 * @brief Inserts a %piecewise_constan_distribution random 05046 * number distribution @p __x into the output stream @p __os. 05047 * 05048 * @param __os An output stream. 05049 * @param __x A %piecewise_constan_distribution random number 05050 * distribution. 05051 * 05052 * @returns The output stream with the state of @p __x inserted or in 05053 * an error state. 05054 */ 05055 template<typename _RealType1, typename _CharT, typename _Traits> 05056 friend std::basic_ostream<_CharT, _Traits>& 05057 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 05058 const std::piecewise_constant_distribution<_RealType1>& __x); 05059 05060 /** 05061 * @brief Extracts a %piecewise_constan_distribution random 05062 * number distribution @p __x from the input stream @p __is. 05063 * 05064 * @param __is An input stream. 05065 * @param __x A %piecewise_constan_distribution random number 05066 * generator engine. 05067 * 05068 * @returns The input stream with @p __x extracted or in an error 05069 * state. 05070 */ 05071 template<typename _RealType1, typename _CharT, typename _Traits> 05072 friend std::basic_istream<_CharT, _Traits>& 05073 operator>>(std::basic_istream<_CharT, _Traits>& __is, 05074 std::piecewise_constant_distribution<_RealType1>& __x); 05075 05076 private: 05077 param_type _M_param; 05078 }; 05079 05080 /** 05081 * @brief Return true if two piecewise constant distributions have 05082 * different parameters. 05083 */ 05084 template<typename _RealType> 05085 inline bool 05086 operator!=(const std::piecewise_constant_distribution<_RealType>& __d1, 05087 const std::piecewise_constant_distribution<_RealType>& __d2) 05088 { return !(__d1 == __d2); } 05089 05090 05091 /** 05092 * @brief A piecewise_linear_distribution random number distribution. 05093 * 05094 * The formula for the piecewise linear probability mass function is 05095 * 05096 */ 05097 template<typename _RealType = double> 05098 class piecewise_linear_distribution 05099 { 05100 static_assert(std::is_floating_point<_RealType>::value, 05101 "template argument not a floating point type"); 05102 05103 public: 05104 /** The type of the range of the distribution. */ 05105 typedef _RealType result_type; 05106 /** Parameter type. */ 05107 struct param_type 05108 { 05109 typedef piecewise_linear_distribution<_RealType> distribution_type; 05110 friend class piecewise_linear_distribution<_RealType>; 05111 05112 param_type() 05113 : _M_int(), _M_den(), _M_cp(), _M_m() 05114 { } 05115 05116 template<typename _InputIteratorB, typename _InputIteratorW> 05117 param_type(_InputIteratorB __bfirst, 05118 _InputIteratorB __bend, 05119 _InputIteratorW __wbegin); 05120 05121 template<typename _Func> 05122 param_type(initializer_list<_RealType> __bl, _Func __fw); 05123 05124 template<typename _Func> 05125 param_type(size_t __nw, _RealType __xmin, _RealType __xmax, 05126 _Func __fw); 05127 05128 // See: http://cpp-next.com/archive/2010/10/implicit-move-must-go/ 05129 param_type(const param_type&) = default; 05130 param_type& operator=(const param_type&) = default; 05131 05132 std::vector<_RealType> 05133 intervals() const 05134 { 05135 if (_M_int.empty()) 05136 { 05137 std::vector<_RealType> __tmp(2); 05138 __tmp[1] = _RealType(1); 05139 return __tmp; 05140 } 05141 else 05142 return _M_int; 05143 } 05144 05145 std::vector<double> 05146 densities() const 05147 { return _M_den.empty() ? std::vector<double>(2, 1.0) : _M_den; } 05148 05149 friend bool 05150 operator==(const param_type& __p1, const param_type& __p2) 05151 { return (__p1._M_int == __p2._M_int 05152 && __p1._M_den == __p2._M_den); } 05153 05154 private: 05155 void 05156 _M_initialize(); 05157 05158 std::vector<_RealType> _M_int; 05159 std::vector<double> _M_den; 05160 std::vector<double> _M_cp; 05161 std::vector<double> _M_m; 05162 }; 05163 05164 explicit 05165 piecewise_linear_distribution() 05166 : _M_param() 05167 { } 05168 05169 template<typename _InputIteratorB, typename _InputIteratorW> 05170 piecewise_linear_distribution(_InputIteratorB __bfirst, 05171 _InputIteratorB __bend, 05172 _InputIteratorW __wbegin) 05173 : _M_param(__bfirst, __bend, __wbegin) 05174 { } 05175 05176 template<typename _Func> 05177 piecewise_linear_distribution(initializer_list<_RealType> __bl, 05178 _Func __fw) 05179 : _M_param(__bl, __fw) 05180 { } 05181 05182 template<typename _Func> 05183 piecewise_linear_distribution(size_t __nw, 05184 _RealType __xmin, _RealType __xmax, 05185 _Func __fw) 05186 : _M_param(__nw, __xmin, __xmax, __fw) 05187 { } 05188 05189 explicit 05190 piecewise_linear_distribution(const param_type& __p) 05191 : _M_param(__p) 05192 { } 05193 05194 /** 05195 * Resets the distribution state. 05196 */ 05197 void 05198 reset() 05199 { } 05200 05201 /** 05202 * @brief Return the intervals of the distribution. 05203 */ 05204 std::vector<_RealType> 05205 intervals() const 05206 { 05207 if (_M_param._M_int.empty()) 05208 { 05209 std::vector<_RealType> __tmp(2); 05210 __tmp[1] = _RealType(1); 05211 return __tmp; 05212 } 05213 else 05214 return _M_param._M_int; 05215 } 05216 05217 /** 05218 * @brief Return a vector of the probability densities of the 05219 * distribution. 05220 */ 05221 std::vector<double> 05222 densities() const 05223 { 05224 return _M_param._M_den.empty() 05225 ? std::vector<double>(2, 1.0) : _M_param._M_den; 05226 } 05227 05228 /** 05229 * @brief Returns the parameter set of the distribution. 05230 */ 05231 param_type 05232 param() const 05233 { return _M_param; } 05234 05235 /** 05236 * @brief Sets the parameter set of the distribution. 05237 * @param __param The new parameter set of the distribution. 05238 */ 05239 void 05240 param(const param_type& __param) 05241 { _M_param = __param; } 05242 05243 /** 05244 * @brief Returns the greatest lower bound value of the distribution. 05245 */ 05246 result_type 05247 min() const 05248 { 05249 return _M_param._M_int.empty() 05250 ? result_type(0) : _M_param._M_int.front(); 05251 } 05252 05253 /** 05254 * @brief Returns the least upper bound value of the distribution. 05255 */ 05256 result_type 05257 max() const 05258 { 05259 return _M_param._M_int.empty() 05260 ? result_type(1) : _M_param._M_int.back(); 05261 } 05262 05263 /** 05264 * @brief Generating functions. 05265 */ 05266 template<typename _UniformRandomNumberGenerator> 05267 result_type 05268 operator()(_UniformRandomNumberGenerator& __urng) 05269 { return this->operator()(__urng, _M_param); } 05270 05271 template<typename _UniformRandomNumberGenerator> 05272 result_type 05273 operator()(_UniformRandomNumberGenerator& __urng, 05274 const param_type& __p); 05275 05276 /** 05277 * @brief Return true if two piecewise linear distributions have the 05278 * same parameters. 05279 */ 05280 friend bool 05281 operator==(const piecewise_linear_distribution& __d1, 05282 const piecewise_linear_distribution& __d2) 05283 { return __d1._M_param == __d2._M_param; } 05284 05285 /** 05286 * @brief Inserts a %piecewise_linear_distribution random number 05287 * distribution @p __x into the output stream @p __os. 05288 * 05289 * @param __os An output stream. 05290 * @param __x A %piecewise_linear_distribution random number 05291 * distribution. 05292 * 05293 * @returns The output stream with the state of @p __x inserted or in 05294 * an error state. 05295 */ 05296 template<typename _RealType1, typename _CharT, typename _Traits> 05297 friend std::basic_ostream<_CharT, _Traits>& 05298 operator<<(std::basic_ostream<_CharT, _Traits>& __os, 05299 const std::piecewise_linear_distribution<_RealType1>& __x); 05300 05301 /** 05302 * @brief Extracts a %piecewise_linear_distribution random number 05303 * distribution @p __x from the input stream @p __is. 05304 * 05305 * @param __is An input stream. 05306 * @param __x A %piecewise_linear_distribution random number 05307 * generator engine. 05308 * 05309 * @returns The input stream with @p __x extracted or in an error 05310 * state. 05311 */ 05312 template<typename _RealType1, typename _CharT, typename _Traits> 05313 friend std::basic_istream<_CharT, _Traits>& 05314 operator>>(std::basic_istream<_CharT, _Traits>& __is, 05315 std::piecewise_linear_distribution<_RealType1>& __x); 05316 05317 private: 05318 param_type _M_param; 05319 }; 05320 05321 /** 05322 * @brief Return true if two piecewise linear distributions have 05323 * different parameters. 05324 */ 05325 template<typename _RealType> 05326 inline bool 05327 operator!=(const std::piecewise_linear_distribution<_RealType>& __d1, 05328 const std::piecewise_linear_distribution<_RealType>& __d2) 05329 { return !(__d1 == __d2); } 05330 05331 05332 /* @} */ // group random_distributions_poisson 05333 05334 /* @} */ // group random_distributions 05335 05336 /** 05337 * @addtogroup random_utilities Random Number Utilities 05338 * @ingroup random 05339 * @{ 05340 */ 05341 05342 /** 05343 * @brief The seed_seq class generates sequences of seeds for random 05344 * number generators. 05345 */ 05346 class seed_seq 05347 { 05348 05349 public: 05350 /** The type of the seed vales. */ 05351 typedef uint_least32_t result_type; 05352 05353 /** Default constructor. */ 05354 seed_seq() 05355 : _M_v() 05356 { } 05357 05358 template<typename _IntType> 05359 seed_seq(std::initializer_list<_IntType> il); 05360 05361 template<typename _InputIterator> 05362 seed_seq(_InputIterator __begin, _InputIterator __end); 05363 05364 // generating functions 05365 template<typename _RandomAccessIterator> 05366 void 05367 generate(_RandomAccessIterator __begin, _RandomAccessIterator __end); 05368 05369 // property functions 05370 size_t size() const 05371 { return _M_v.size(); } 05372 05373 template<typename OutputIterator> 05374 void 05375 param(OutputIterator __dest) const 05376 { std::copy(_M_v.begin(), _M_v.end(), __dest); } 05377 05378 private: 05379 /// 05380 std::vector<result_type> _M_v; 05381 }; 05382 05383 /* @} */ // group random_utilities 05384 05385 /* @} */ // group random 05386 05387 _GLIBCXX_END_NAMESPACE_VERSION 05388 } // namespace std 05389 05390 #endif