ICode9

精准搜索请尝试: 精确搜索
首页 > 其他分享> 文章详细

mt19937是什么鬼

2019-02-01 22:02:45  阅读:316  来源: 互联网

标签:std CONSTANT mt19937 mersenne 什么 RANDOM twister BOOST


今天看一个C++的例子,突然看到这个mt19937,起先还以为是什么地方搞错了,怎么会有这个怪的名称呢?这个名称是mt1937? 代表1937年?心里一开始有这个疑问。代码如下:

 

std::random_device rd;
		std::mt19937 gen(rd());
		std::uniform_int_distribution<> dist(-10, 10);
		std::vector<int> v;
		generate_n(back_inserter(v), 20, bind(dist, gen));

		std::cout << "Before sort: ";
		copy(v.begin(), v.end(), std::ostream_iterator<int>(std::cout, " "));

		selection_sort(v.begin(), v.end());

		std::cout << "\nAfter sort: ";
		copy(v.begin(), v.end(), std::ostream_iterator<int>(std::cout, " "));
		std::cout << '\n';

后来通过查看MSDN以及网络相关的文章,才了解到这个是最新的计算随机数的算法。



Mersenne Twister算法译为马特赛特旋转演算法,是伪随机数发生器之一,其主要作用是生成伪随机数。此算法是Makoto Matsumoto (松本)和Takuji Nishimura (西村)于1997年开发的,基于有限二进制字段上的矩阵线性再生。可以快速产生高质量的伪随机数,修正了古老随机数产生算法的很多缺陷。Mersenne Twister这个名字来自周期长度通常取Mersenne质数这样一个事实。常见的有两个变种Mersenne Twister MT19937和Mersenne Twister MT19937-64。
Mersenne Twister算法的原理:Mersenne Twister算法是利用线性反馈移位寄存器(LFSR)产生随机数的,LFSR的反馈函数是寄存器中某些位的简单异或,这些位也称之为抽头序列。一个n位的LFSR能够在重复之前产生2^n-1位长的伪随机序列。只有具有一定抽头序列的LFSR才能通过所有2^n-1个内部状态,产生2^n - 1位长的伪随机序列,这个输出的序列就称之为m序列。为了使LFSR成为最大周期的LFSR,由抽头序列加上常数1形成的多项式必须是本原多项式。一个n阶本原多项式是不可约多项式,它能整除x^(2*n-1)+1而不能整除x^d+1,其中d能整除2^n-1。例如(32,7,5,3,2,1,0)是指本原多项式x^32+x^7+x^5+x^3+x^2+x+1,把它转化为最大周期LFSR就是在LFSR的第32,7,5,2,1位抽头。利用上述两种方法产生周期为m的伪随机序列后,只需要将产生的伪随机序列除以序列的周期,就可以得到(0,1)上均匀分布的伪随机序列了。
Mersenne Twister有以下优点:随机性好,在计算机上容易实现,占用内存较少(mt19937的C程式码执行仅需624个字的工作区域),与其它已使用的伪随机数发生器相比,产生随机数的速度快、周期长,可达到2^19937-1,且具有623维均匀分布的性质,对于一般的应用来说,足够大了,序列关联比较小,能通过很多随机性测试。
马特赛特旋转演算法产生一个伪随机数,一般为MtRand()。

从这段话里可以看到它是2的19937次方,所以它的名称就来源这里。

在STL标准库定义如下:

 

typedef mersenne_twister_engine<uint_fast32_t,
  32,624,397,31,0x9908b0df,11,0xffffffff,7,0x9d2c5680,15,0xefc60000,18,1812433253>
  mt19937;

这个算法在C++里简单地实现如下:

 

#include <stdint.h>

// Define MT19937 constants (32-bit RNG)
enum
{
    // Assumes W = 32 (omitting this)
    N = 624,
    M = 397,
    R = 31,
    A = 0x9908B0DF,

    F = 1812433253,

    U = 11,
    // Assumes D = 0xFFFFFFFF (omitting this)

    S = 7,
    B = 0x9D2C5680,

    T = 15,
    C = 0xEFC60000,

    L = 18,

    MASK_LOWER = (1ull << R) - 1,
    MASK_UPPER = (1ull << R)
};

static uint32_t  mt[N];
static uint16_t  index;

// Re-init with a given seed
void Initialize(const uint32_t  seed)
{
    uint32_t  i;

    mt[0] = seed;

    for ( i = 1; i < N; i++ )
    {
        mt[i] = (F * (mt[i - 1] ^ (mt[i - 1] >> 30)) + i);
    }

    index = N;
}

static void Twist()
{
    uint32_t  i, x, xA;

    for ( i = 0; i < N; i++ )
    {
        x = (mt[i] & MASK_UPPER) + (mt[(i + 1) % N] & MASK_LOWER);

        xA = x >> 1;

        if ( x & 0x1 )
            xA ^= A;

        mt[i] = mt[(i + M) % N] ^ xA;
    }

    index = 0;
}

// Obtain a 32-bit random number
uint32_t ExtractU32()
{
    uint32_t  y;
    int       i = index;

    if ( index >= N )
    {
        Twist();
        i = index;
    }

    y = mt[i];
    index = i + 1;

    y ^= (mt[i] >> U);
    y ^= (y << S) & B;
    y ^= (y << T) & C;
    y ^= (y >> L);

    return y;
}

相关网站:

http://www.cppblog.com/Chipset/archive/2009/01/19/72330.html

 

boost库的实现:

 

/* boost random/mersenne_twister.hpp header file
 *
 * Copyright Jens Maurer 2000-2001
 * Copyright Steven Watanabe 2010
 * Distributed under the Boost Software License, Version 1.0. (See
 * accompanying file LICENSE_1_0.txt or copy at
 * http://www.boost.org/LICENSE_1_0.txt)
 *
 * See http://www.boost.org for most recent version including documentation.
 *
 * $Id: mersenne_twister.hpp 74867 2011-10-09 23:13:31Z steven_watanabe $
 *
 * Revision history
 *  2001-02-18  moved to individual header files
 */

#ifndef BOOST_RANDOM_MERSENNE_TWISTER_HPP
#define BOOST_RANDOM_MERSENNE_TWISTER_HPP

#include <iosfwd>
#include <istream>
#include <stdexcept>
#include <boost/config.hpp>
#include <boost/cstdint.hpp>
#include <boost/integer/integer_mask.hpp>
#include <boost/random/detail/config.hpp>
#include <boost/random/detail/ptr_helper.hpp>
#include <boost/random/detail/seed.hpp>
#include <boost/random/detail/seed_impl.hpp>
#include <boost/random/detail/generator_seed_seq.hpp>

namespace boost {
namespace random {

/**
 * Instantiations of class template mersenne_twister_engine model a
 * \pseudo_random_number_generator. It uses the algorithm described in
 *
 *  @blockquote
 *  "Mersenne Twister: A 623-dimensionally equidistributed uniform
 *  pseudo-random number generator", Makoto Matsumoto and Takuji Nishimura,
 *  ACM Transactions on Modeling and Computer Simulation: Special Issue on
 *  Uniform Random Number Generation, Vol. 8, No. 1, January 1998, pp. 3-30. 
 *  @endblockquote
 *
 * @xmlnote
 * The boost variant has been implemented from scratch and does not
 * derive from or use mt19937.c provided on the above WWW site. However, it
 * was verified that both produce identical output.
 * @endxmlnote
 *
 * The seeding from an integer was changed in April 2005 to address a
 * <a href="http://www.math.sci.hiroshima-u.ac.jp/~m-mat/MT/MT2002/emt19937ar.html">weakness</a>.
 * 
 * The quality of the generator crucially depends on the choice of the
 * parameters.  User code should employ one of the sensibly parameterized
 * generators such as \mt19937 instead.
 *
 * The generator requires considerable amounts of memory for the storage of
 * its state array. For example, \mt11213b requires about 1408 bytes and
 * \mt19937 requires about 2496 bytes.
 */
template<class UIntType,
         std::size_t w, std::size_t n, std::size_t m, std::size_t r,
         UIntType a, std::size_t u, UIntType d, std::size_t s,
         UIntType b, std::size_t t,
         UIntType c, std::size_t l, UIntType f>
class mersenne_twister_engine
{
public:
    typedef UIntType result_type;
    BOOST_STATIC_CONSTANT(std::size_t, word_size = w);
    BOOST_STATIC_CONSTANT(std::size_t, state_size = n);
    BOOST_STATIC_CONSTANT(std::size_t, shift_size = m);
    BOOST_STATIC_CONSTANT(std::size_t, mask_bits = r);
    BOOST_STATIC_CONSTANT(UIntType, xor_mask = a);
    BOOST_STATIC_CONSTANT(std::size_t, tempering_u = u);
    BOOST_STATIC_CONSTANT(UIntType, tempering_d = d);
    BOOST_STATIC_CONSTANT(std::size_t, tempering_s = s);
    BOOST_STATIC_CONSTANT(UIntType, tempering_b = b);
    BOOST_STATIC_CONSTANT(std::size_t, tempering_t = t);
    BOOST_STATIC_CONSTANT(UIntType, tempering_c = c);
    BOOST_STATIC_CONSTANT(std::size_t, tempering_l = l);
    BOOST_STATIC_CONSTANT(UIntType, initialization_multiplier = f);
    BOOST_STATIC_CONSTANT(UIntType, default_seed = 5489u);
  
    // backwards compatibility
    BOOST_STATIC_CONSTANT(UIntType, parameter_a = a);
    BOOST_STATIC_CONSTANT(std::size_t, output_u = u);
    BOOST_STATIC_CONSTANT(std::size_t, output_s = s);
    BOOST_STATIC_CONSTANT(UIntType, output_b = b);
    BOOST_STATIC_CONSTANT(std::size_t, output_t = t);
    BOOST_STATIC_CONSTANT(UIntType, output_c = c);
    BOOST_STATIC_CONSTANT(std::size_t, output_l = l);
    
    // old Boost.Random concept requirements
    BOOST_STATIC_CONSTANT(bool, has_fixed_range = false);


    /**
     * Constructs a @c mersenne_twister_engine and calls @c seed().
     */
    mersenne_twister_engine() { seed(); }

    /**
     * Constructs a @c mersenne_twister_engine and calls @c seed(value).
     */
    BOOST_RANDOM_DETAIL_ARITHMETIC_CONSTRUCTOR(mersenne_twister_engine,
                                               UIntType, value)
    { seed(value); }
    template<class It> mersenne_twister_engine(It& first, It last)
    { seed(first,last); }

    /**
     * Constructs a mersenne_twister_engine and calls @c seed(gen).
     *
     * @xmlnote
     * The copy constructor will always be preferred over
     * the templated constructor.
     * @endxmlnote
     */
    BOOST_RANDOM_DETAIL_SEED_SEQ_CONSTRUCTOR(mersenne_twister_engine,
                                             SeedSeq, seq)
    { seed(seq); }

    // compiler-generated copy ctor and assignment operator are fine

    /** Calls @c seed(default_seed). */
    void seed() { seed(default_seed); }

    /**
     * Sets the state x(0) to v mod 2w. Then, iteratively,
     * sets x(i) to
     * (i + f * (x(i-1) xor (x(i-1) rshift w-2))) mod 2<sup>w</sup>
     * for i = 1 .. n-1. x(n) is the first value to be returned by operator().
     */
    BOOST_RANDOM_DETAIL_ARITHMETIC_SEED(mersenne_twister_engine, UIntType, value)
    {
        // New seeding algorithm from 
        // http://www.math.sci.hiroshima-u.ac.jp/~m-mat/MT/MT2002/emt19937ar.html
        // In the previous versions, MSBs of the seed affected only MSBs of the
        // state x[].
        const UIntType mask = (max)();
        x[0] = value & mask;
        for (i = 1; i < n; i++) {
            // See Knuth "The Art of Computer Programming"
            // Vol. 2, 3rd ed., page 106
            x[i] = (f * (x[i-1] ^ (x[i-1] >> (w-2))) + i) & mask;
        }
    }
    
    /**
     * Seeds a mersenne_twister_engine using values produced by seq.generate().
     */
    BOOST_RANDOM_DETAIL_SEED_SEQ_SEED(mersenne_twister_engine, SeeqSeq, seq)
    {
        detail::seed_array_int<w>(seq, x);
        i = n;

        // fix up the state if it's all zeroes.
        if((x[0] & (~static_cast<UIntType>(0) << r)) == 0) {
            for(std::size_t j = 1; j < n; ++j) {
                if(x[j] != 0) return;
            }
            x[0] = static_cast<UIntType>(1) << (w-1);
        }
    }

    /** Sets the state of the generator using values from an iterator range. */
    template<class It>
    void seed(It& first, It last)
    {
        detail::fill_array_int<w>(first, last, x);
        i = n;

        // fix up the state if it's all zeroes.
        if((x[0] & (~static_cast<UIntType>(0) << r)) == 0) {
            for(std::size_t j = 1; j < n; ++j) {
                if(x[j] != 0) return;
            }
            x[0] = static_cast<UIntType>(1) << (w-1);
        }
    }
  
    /** Returns the smallest value that the generator can produce. */
    static result_type min BOOST_PREVENT_MACRO_SUBSTITUTION ()
    { return 0; }
    /** Returns the largest value that the generator can produce. */
    static result_type max BOOST_PREVENT_MACRO_SUBSTITUTION ()
    { return boost::low_bits_mask_t<w>::sig_bits; }
    
    /** Produces the next value of the generator. */
    result_type operator()();

    /** Fills a range with random values */
    template<class Iter>
    void generate(Iter first, Iter last)
    { detail::generate_from_int(*this, first, last); }

    /**
     * Advances the state of the generator by @c z steps.  Equivalent to
     *
     * @code
     * for(unsigned long long i = 0; i < z; ++i) {
     *     gen();
     * }
     * @endcode
     */
    void discard(boost::uintmax_t z)
    {
        for(boost::uintmax_t j = 0; j < z; ++j) {
            (*this)();
        }
    }

#ifndef BOOST_RANDOM_NO_STREAM_OPERATORS
    /** Writes a mersenne_twister_engine to a @c std::ostream */
    template<class CharT, class Traits>
    friend std::basic_ostream<CharT,Traits>&
    operator<<(std::basic_ostream<CharT,Traits>& os,
               const mersenne_twister_engine& mt)
    {
        mt.print(os);
        return os;
    }
    
    /** Reads a mersenne_twister_engine from a @c std::istream */
    template<class CharT, class Traits>
    friend std::basic_istream<CharT,Traits>&
    operator>>(std::basic_istream<CharT,Traits>& is,
               mersenne_twister_engine& mt)
    {
        for(std::size_t j = 0; j < mt.state_size; ++j)
            is >> mt.x[j] >> std::ws;
        // MSVC (up to 7.1) and Borland (up to 5.64) don't handle the template
        // value parameter "n" available from the class template scope, so use
        // the static constant with the same value
        mt.i = mt.state_size;
        return is;
    }
#endif

    /**
     * Returns true if the two generators are in the same state,
     * and will thus produce identical sequences.
     */
    friend bool operator==(const mersenne_twister_engine& x,
                           const mersenne_twister_engine& y)
    {
        if(x.i < y.i) return x.equal_imp(y);
        else return y.equal_imp(x);
    }
    
    /**
     * Returns true if the two generators are in different states.
     */
    friend bool operator!=(const mersenne_twister_engine& x,
                           const mersenne_twister_engine& y)
    { return !(x == y); }

private:
    /// \cond show_private

    void twist();

    /**
     * Does the work of operator==.  This is in a member function
     * for portability.  Some compilers, such as msvc 7.1 and
     * Sun CC 5.10 can't access template parameters or static
     * members of the class from inline friend functions.
     *
     * requires i <= other.i
     */
    bool equal_imp(const mersenne_twister_engine& other) const
    {
        UIntType back[n];
        std::size_t offset = other.i - i;
        for(std::size_t j = 0; j + offset < n; ++j)
            if(x[j] != other.x[j+offset])
                return false;
        rewind(&back[n-1], offset);
        for(std::size_t j = 0; j < offset; ++j)
            if(back[j + n - offset] != other.x[j])
                return false;
        return true;
    }

    /**
     * Does the work of operator<<.  This is in a member function
     * for portability.
     */
    template<class CharT, class Traits>
    void print(std::basic_ostream<CharT, Traits>& os) const
    {
        UIntType data[n];
        for(std::size_t j = 0; j < i; ++j) {
            data[j + n - i] = x[j];
        }
        if(i != n) {
            rewind(&data[n - i - 1], n - i);
        }
        os << data[0];
        for(std::size_t j = 1; j < n; ++j) {
            os << ' ' << data[j];
        }
    }

    /**
     * Copies z elements of the state preceding x[0] into
     * the array whose last element is last.
     */
    void rewind(UIntType* last, std::size_t z) const
    {
        const UIntType upper_mask = (~static_cast<UIntType>(0)) << r;
        const UIntType lower_mask = ~upper_mask;
        UIntType y0 = x[m-1] ^ x[n-1];
        if(y0 & (static_cast<UIntType>(1) << (w-1))) {
            y0 = ((y0 ^ a) << 1) | 1;
        } else {
            y0 = y0 << 1;
        }
        for(std::size_t sz = 0; sz < z; ++sz) {
            UIntType y1 =
                rewind_find(last, sz, m-1) ^ rewind_find(last, sz, n-1);
            if(y1 & (static_cast<UIntType>(1) << (w-1))) {
                y1 = ((y1 ^ a) << 1) | 1;
            } else {
                y1 = y1 << 1;
            }
            *(last - sz) = (y0 & upper_mask) | (y1 & lower_mask);
            y0 = y1;
        }
    }

    /**
     * Given a pointer to the last element of the rewind array,
     * and the current size of the rewind array, finds an element
     * relative to the next available slot in the rewind array.
     */
    UIntType
    rewind_find(UIntType* last, std::size_t size, std::size_t j) const
    {
        std::size_t index = (j + n - size + n - 1) % n;
        if(index < n - size) {
            return x[index];
        } else {
            return *(last - (n - 1 - index));
        }
    }

    /// \endcond

    // state representation: next output is o(x(i))
    //   x[0]  ... x[k] x[k+1] ... x[n-1]   represents
    //  x(i-k) ... x(i) x(i+1) ... x(i-k+n-1)

    UIntType x[n]; 
    std::size_t i;
};

/// \cond show_private

#ifndef BOOST_NO_INCLASS_MEMBER_INITIALIZATION
//  A definition is required even for integral static constants
#define BOOST_RANDOM_MT_DEFINE_CONSTANT(type, name)                         \
template<class UIntType, std::size_t w, std::size_t n, std::size_t m,       \
    std::size_t r, UIntType a, std::size_t u, UIntType d, std::size_t s,    \
    UIntType b, std::size_t t, UIntType c, std::size_t l, UIntType f>       \
const type mersenne_twister_engine<UIntType,w,n,m,r,a,u,d,s,b,t,c,l,f>::name
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, word_size);
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, state_size);
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, shift_size);
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, mask_bits);
BOOST_RANDOM_MT_DEFINE_CONSTANT(UIntType, xor_mask);
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, tempering_u);
BOOST_RANDOM_MT_DEFINE_CONSTANT(UIntType, tempering_d);
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, tempering_s);
BOOST_RANDOM_MT_DEFINE_CONSTANT(UIntType, tempering_b);
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, tempering_t);
BOOST_RANDOM_MT_DEFINE_CONSTANT(UIntType, tempering_c);
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, tempering_l);
BOOST_RANDOM_MT_DEFINE_CONSTANT(UIntType, initialization_multiplier);
BOOST_RANDOM_MT_DEFINE_CONSTANT(UIntType, default_seed);
BOOST_RANDOM_MT_DEFINE_CONSTANT(UIntType, parameter_a);
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, output_u );
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, output_s);
BOOST_RANDOM_MT_DEFINE_CONSTANT(UIntType, output_b);
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, output_t);
BOOST_RANDOM_MT_DEFINE_CONSTANT(UIntType, output_c);
BOOST_RANDOM_MT_DEFINE_CONSTANT(std::size_t, output_l);
BOOST_RANDOM_MT_DEFINE_CONSTANT(bool, has_fixed_range);
#undef BOOST_RANDOM_MT_DEFINE_CONSTANT
#endif

template<class UIntType,
         std::size_t w, std::size_t n, std::size_t m, std::size_t r,
         UIntType a, std::size_t u, UIntType d, std::size_t s,
         UIntType b, std::size_t t,
         UIntType c, std::size_t l, UIntType f>
void
mersenne_twister_engine<UIntType,w,n,m,r,a,u,d,s,b,t,c,l,f>::twist()
{
    const UIntType upper_mask = (~static_cast<UIntType>(0)) << r;
    const UIntType lower_mask = ~upper_mask;

    const std::size_t unroll_factor = 6;
    const std::size_t unroll_extra1 = (n-m) % unroll_factor;
    const std::size_t unroll_extra2 = (m-1) % unroll_factor;

    // split loop to avoid costly modulo operations
    {  // extra scope for MSVC brokenness w.r.t. for scope
        for(std::size_t j = 0; j < n-m-unroll_extra1; j++) {
            UIntType y = (x[j] & upper_mask) | (x[j+1] & lower_mask);
            x[j] = x[j+m] ^ (y >> 1) ^ ((x[j+1]&1) * a);
        }
    }
    {
        for(std::size_t j = n-m-unroll_extra1; j < n-m; j++) {
            UIntType y = (x[j] & upper_mask) | (x[j+1] & lower_mask);
            x[j] = x[j+m] ^ (y >> 1) ^ ((x[j+1]&1) * a);
        }
    }
    {
        for(std::size_t j = n-m; j < n-1-unroll_extra2; j++) {
            UIntType y = (x[j] & upper_mask) | (x[j+1] & lower_mask);
            x[j] = x[j-(n-m)] ^ (y >> 1) ^ ((x[j+1]&1) * a);
        }
    }
    {
        for(std::size_t j = n-1-unroll_extra2; j < n-1; j++) {
            UIntType y = (x[j] & upper_mask) | (x[j+1] & lower_mask);
            x[j] = x[j-(n-m)] ^ (y >> 1) ^ ((x[j+1]&1) * a);
        }
    }
    // last iteration
    UIntType y = (x[n-1] & upper_mask) | (x[0] & lower_mask);
    x[n-1] = x[m-1] ^ (y >> 1) ^ ((x[0]&1) * a);
    i = 0;
}
/// \endcond

template<class UIntType,
         std::size_t w, std::size_t n, std::size_t m, std::size_t r,
         UIntType a, std::size_t u, UIntType d, std::size_t s,
         UIntType b, std::size_t t,
         UIntType c, std::size_t l, UIntType f>
inline typename
mersenne_twister_engine<UIntType,w,n,m,r,a,u,d,s,b,t,c,l,f>::result_type
mersenne_twister_engine<UIntType,w,n,m,r,a,u,d,s,b,t,c,l,f>::operator()()
{
    if(i == n)
        twist();
    // Step 4
    UIntType z = x[i];
    ++i;
    z ^= ((z >> u) & d);
    z ^= ((z << s) & b);
    z ^= ((z << t) & c);
    z ^= (z >> l);
    return z;
}

/**
 * The specializations \mt11213b and \mt19937 are from
 *
 *  @blockquote
 *  "Mersenne Twister: A 623-dimensionally equidistributed
 *  uniform pseudo-random number generator", Makoto Matsumoto
 *  and Takuji Nishimura, ACM Transactions on Modeling and
 *  Computer Simulation: Special Issue on Uniform Random Number
 *  Generation, Vol. 8, No. 1, January 1998, pp. 3-30. 
 *  @endblockquote
 */
typedef mersenne_twister_engine<uint32_t,32,351,175,19,0xccab8ee7,
    11,0xffffffff,7,0x31b6ab00,15,0xffe50000,17,1812433253> mt11213b;

/**
 * The specializations \mt11213b and \mt19937 are from
 *
 *  @blockquote
 *  "Mersenne Twister: A 623-dimensionally equidistributed
 *  uniform pseudo-random number generator", Makoto Matsumoto
 *  and Takuji Nishimura, ACM Transactions on Modeling and
 *  Computer Simulation: Special Issue on Uniform Random Number
 *  Generation, Vol. 8, No. 1, January 1998, pp. 3-30. 
 *  @endblockquote
 */
typedef mersenne_twister_engine<uint32_t,32,624,397,31,0x9908b0df,
    11,0xffffffff,7,0x9d2c5680,15,0xefc60000,18,1812433253> mt19937;

#if !defined(BOOST_NO_INT64_T) && !defined(BOOST_NO_INTEGRAL_INT64_T)
typedef mersenne_twister_engine<uint64_t,64,312,156,31,
    UINT64_C(0xb5026f5aa96619e9),29,UINT64_C(0x5555555555555555),17,
    UINT64_C(0x71d67fffeda60000),37,UINT64_C(0xfff7eee000000000),43,
    UINT64_C(6364136223846793005)> mt19937_64;
#endif

/// \cond show_deprecated

template<class UIntType,
         int w, int n, int m, int r,
         UIntType a, int u, std::size_t s,
         UIntType b, int t,
         UIntType c, int l, UIntType v>
class mersenne_twister :
    public mersenne_twister_engine<UIntType,
        w, n, m, r, a, u, ~(UIntType)0, s, b, t, c, l, 1812433253>
{
    typedef mersenne_twister_engine<UIntType,
        w, n, m, r, a, u, ~(UIntType)0, s, b, t, c, l, 1812433253> base_type;
public:
    mersenne_twister() {}
    BOOST_RANDOM_DETAIL_GENERATOR_CONSTRUCTOR(mersenne_twister, Gen, gen)
    { seed(gen); }
    BOOST_RANDOM_DETAIL_ARITHMETIC_CONSTRUCTOR(mersenne_twister, UIntType, val)
    { seed(val); }
    template<class It>
    mersenne_twister(It& first, It last) : base_type(first, last) {}
    void seed() { base_type::seed(); }
    BOOST_RANDOM_DETAIL_GENERATOR_SEED(mersenne_twister, Gen, gen)
    {
        detail::generator_seed_seq<Gen> seq(gen);
        base_type::seed(seq);
    }
    BOOST_RANDOM_DETAIL_ARITHMETIC_SEED(mersenne_twister, UIntType, val)
    { base_type::seed(val); }
    template<class It>
    void seed(It& first, It last) { base_type::seed(first, last); }
};

/// \endcond

} // namespace random

using random::mt11213b;
using random::mt19937;
using random::mt19937_64;

} // namespace boost

BOOST_RANDOM_PTR_HELPER_SPEC(boost::mt11213b)
BOOST_RANDOM_PTR_HELPER_SPEC(boost::mt19937)
BOOST_RANDOM_PTR_HELPER_SPEC(boost::mt19937_64)

#endif // BOOST_RANDOM_MERSENNE_TWISTER_HPP


 

1. C++标准模板库从入门到精通 

 

 

 

  http://edu.csdn.net/course/detail/3324

2.跟老菜鸟学C++

http://edu.csdn.net/course/detail/2901

3. 跟老菜鸟学python

http://edu.csdn.net/course/detail/2592

4. 在VC2015里学会使用tinyxml库

http://edu.csdn.net/course/detail/2590

5. 在Windows下SVN的版本管理与实战 

 http://edu.csdn.net/course/detail/2579

6.Visual Studio 2015开发C++程序的基本使用 

http://edu.csdn.net/course/detail/2570

7.在VC2015里使用protobuf协议

http://edu.csdn.net/course/detail/2582

8.在VC2015里学会使用MySQL数据库

http://edu.csdn.net/course/detail/2672

 

再分享一下我老师大神的人工智能教程吧。零基础!通俗易懂!风趣幽默!还带黄段子!希望你也加入到我们人工智能的队伍中来!https://blog.csdn.net/jiangjunshow

标签:std,CONSTANT,mt19937,mersenne,什么,RANDOM,twister,BOOST
来源: https://www.cnblogs.com/skiwnchh/p/10347115.html

本站声明: 1. iCode9 技术分享网(下文简称本站)提供的所有内容,仅供技术学习、探讨和分享;
2. 关于本站的所有留言、评论、转载及引用,纯属内容发起人的个人观点,与本站观点和立场无关;
3. 关于本站的所有言论和文字,纯属内容发起人的个人观点,与本站观点和立场无关;
4. 本站文章均是网友提供,不完全保证技术分享内容的完整性、准确性、时效性、风险性和版权归属;如您发现该文章侵犯了您的权益,可联系我们第一时间进行删除;
5. 本站为非盈利性的个人网站,所有内容不会用来进行牟利,也不会利用任何形式的广告来间接获益,纯粹是为了广大技术爱好者提供技术内容和技术思想的分享性交流网站。

专注分享技术,共同学习,共同进步。侵权联系[81616952@qq.com]

Copyright (C)ICode9.com, All Rights Reserved.

ICode9版权所有