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Mersenne Twister

The Mersenne Twister is a general-purpose pseudorandom number generator (PRNG) developed in 1997 by Makoto Matsumoto [ja] (松本 眞) and Takuji Nishimura (西村 拓士).[1][2] Its name derives from the choice of a Mersenne prime as its period length.

The Mersenne Twister was designed specifically to rectify most of the flaws found in older PRNGs.

The most commonly used version of the Mersenne Twister algorithm is based on the Mersenne prime . The standard implementation of that, MT19937, uses a 32-bit word length. There is another implementation (with five variants[3]) that uses a 64-bit word length, MT19937-64; it generates a different sequence.

k-distribution edit

A pseudorandom sequence   of w-bit integers of period P is said to be k-distributed to v-bit accuracy if the following holds.

Let truncv(x) denote the number formed by the leading v bits of x, and consider P of the k v-bit vectors
 .
Then each of the   possible combinations of bits occurs the same number of times in a period, except for the all-zero combination that occurs once less often.

Algorithmic detail edit

 
Visualisation of generation of pseudo-random 32-bit integers using a Mersenne Twister. The 'Extract number' section shows an example where integer 0 has already been output and the index is at integer 1. 'Generate numbers' is run when all integers have been output.

For a w-bit word length, the Mersenne Twister generates integers in the range  .

The Mersenne Twister algorithm is based on a matrix linear recurrence over a finite binary field  . The algorithm is a twisted generalised feedback shift register[4] (twisted GFSR, or TGFSR) of rational normal form (TGFSR(R)), with state bit reflection and tempering. The basic idea is to define a series   through a simple recurrence relation, and then output numbers of the form  , where T is an invertible  -matrix called a tempering matrix.

The general algorithm is characterized by the following quantities:

  • w: word size (in number of bits)
  • n: degree of recurrence
  • m: middle word, an offset used in the recurrence relation defining the series  ,  
  • r: separation point of one word, or the number of bits of the lower bitmask,  
  • a: coefficients of the rational normal form twist matrix
  • b, c: TGFSR(R) tempering bitmasks
  • s, t: TGFSR(R) tempering bit shifts
  • u, d, l: additional Mersenne Twister tempering bit shifts/masks

with the restriction that   is a Mersenne prime. This choice simplifies the primitivity test and k-distribution test that are needed in the parameter search.

The series   is defined as a series of w-bit quantities with the recurrence relation:

 

where   denotes concatenation of bit vectors (with upper bits on the left),   the bitwise exclusive or (XOR),   means the upper wr bits of  , and   means the lower r bits of  . The twist transformation A is defined in rational normal form as:

 
with   as the   identity matrix. The rational normal form has the benefit that multiplication by A can be efficiently expressed as: (remember that here matrix multiplication is being done in  , and therefore bitwise XOR takes the place of addition)
 
where   is the lowest order bit of  .

As like TGFSR(R), the Mersenne Twister is cascaded with a tempering transform to compensate for the reduced dimensionality of equidistribution (because of the choice of A being in the rational normal form). Note that this is equivalent to using the matrix A where   for T an invertible matrix, and therefore the analysis of characteristic polynomial mentioned below still holds.

As with A, we choose a tempering transform to be easily computable, and so do not actually construct T itself. The tempering is defined in the case of Mersenne Twister as

 

where   is the next value from the series,   is a temporary intermediate value, and   is the value returned from the algorithm, with  and   as the bitwise left and right shifts, and   as the bitwise AND. The first and last transforms are added in order to improve lower-bit equidistribution. From the property of TGFSR,   is required to reach the upper bound of equidistribution for the upper bits.

The coefficients for MT19937 are:

 

Note that 32-bit implementations of the Mersenne Twister generally have d = FFFFFFFF16. As a result, the d is occasionally omitted from the algorithm description, since the bitwise and with d in that case has no effect.

The coefficients for MT19937-64 are:[5]

 

Initialization edit

The state needed for a Mersenne Twister implementation is an array of n values of w bits each. To initialize the array, a w-bit seed value is used to supply   through   by setting   to the seed value and thereafter setting

 

for   from   to  .

  • The first value the algorithm then generates is based on  , not on  .
  • The constant f forms another parameter to the generator, though not part of the algorithm proper.
  • The value for f for MT19937 is 1812433253.
  • The value for f for MT19937-64 is 6364136223846793005.[5]

Comparison with classical GFSR edit

In order to achieve the   theoretical upper limit of the period in a TGFSR,   must be a primitive polynomial,   being the characteristic polynomial of

 
 

The twist transformation improves the classical GFSR with the following key properties:

  • The period reaches the theoretical upper limit   (except if initialized with 0)
  • Equidistribution in n dimensions (e.g. linear congruential generators can at best manage reasonable distribution in five dimensions)

Variants edit

CryptMT is a stream cipher and cryptographically secure pseudorandom number generator which uses Mersenne Twister internally.[6][7] It was developed by Matsumoto and Nishimura alongside Mariko Hagita and Mutsuo Saito. It has been submitted to the eSTREAM project of the eCRYPT network.[6] Unlike Mersenne Twister or its other derivatives, CryptMT is patented.

MTGP is a variant of Mersenne Twister optimised for graphics processing units published by Mutsuo Saito and Makoto Matsumoto.[8] The basic linear recurrence operations are extended from MT and parameters are chosen to allow many threads to compute the recursion in parallel, while sharing their state space to reduce memory load. The paper claims improved equidistribution over MT and performance on an old (2008-era) GPU (Nvidia GTX260 with 192 cores) of 4.7 ms for 5×107 random 32-bit integers.

The SFMT (SIMD-oriented Fast Mersenne Twister) is a variant of Mersenne Twister, introduced in 2006,[9] designed to be fast when it runs on 128-bit SIMD.

Intel SSE2 and PowerPC AltiVec are supported by SFMT. It is also used for games with the Cell BE in the PlayStation 3.[11]

TinyMT is a variant of Mersenne Twister, proposed by Saito and Matsumoto in 2011.[12] TinyMT uses just 127 bits of state space, a significant decrease compared to the original's 2.5 KiB of state. However, it has a period of  , far shorter than the original, so it is only recommended by the authors in cases where memory is at a premium.

Characteristics edit

Advantages:

  • Permissively-licensed and patent-free for all variants except CryptMT.
  • Passes numerous tests for statistical randomness, including the Diehard tests and most, but not all of the TestU01 tests.[13]
  • A very long period of  . Note that a long period is not a guarantee of quality in a random number generator, short periods, such as the   common in many older software packages, can be problematic.[14]
  • k-distributed to 32-bit accuracy for every   (for a definition of k-distributed, see below)
  • Implementations generally create random numbers faster than hardware-implemented methods. A study found that the Mersenne Twister creates 64-bit floating point random numbers approximately twenty times faster than the hardware-implemented, processor-based RDRAND instruction set.[15]

Disadvantages:

  • Relatively large state buffer, of almost 2.5 kB, unless the TinyMT variant is used.
  • Mediocre throughput by modern standards, unless the SFMT variant (discussed below) is used.[16]
  • Exhibits two clear failures (linear complexity) in both Crush and BigCrush in the TestU01 suite. The test, like Mersenne Twister, is based on an  -algebra.[13]
  • Multiple instances that differ only in seed value (but not other parameters) are not generally appropriate for Monte-Carlo simulations that require independent random number generators, though there exists a method for choosing multiple sets of parameter values.[17][18]
  • Poor diffusion: can take a long time to start generating output that passes randomness tests, if the initial state is highly non-random—particularly if the initial state has many zeros. A consequence of this is that two instances of the generator, started with initial states that are almost the same, will usually output nearly the same sequence for many iterations, before eventually diverging. The 2002 update to the MT algorithm has improved initialization, so that beginning with such a state is very unlikely.[19] The GPU version (MTGP) is said to be even better.[20]
  • Contains subsequences with more 0's than 1's. This adds to the poor diffusion property to make recovery from many-zero states difficult.
  • Is not cryptographically secure, unless the CryptMT variant (discussed below) is used. The reason is that observing a sufficient number of iterations (624 in the case of MT19937, since this is the size of the state vector from which future iterations are produced) allows one to predict all future iterations.

Applications edit

The Mersenne Twister is used as default PRNG by the following software:

It is also available in Apache Commons,[47] in the standard C++ library (since C++11),[48][49] and in Mathematica.[50] Add-on implementations are provided in many program libraries, including the Boost C++ Libraries,[51] the CUDA Library,[52] and the NAG Numerical Library.[53]

The Mersenne Twister is one of two PRNGs in SPSS: the other generator is kept only for compatibility with older programs, and the Mersenne Twister is stated to be "more reliable".[54] The Mersenne Twister is similarly one of the PRNGs in SAS: the other generators are older and deprecated.[55] The Mersenne Twister is the default PRNG in Stata, the other one is KISS, for compatibility with older versions of Stata.[56]

Alternatives edit

An alternative generator, WELL ("Well Equidistributed Long-period Linear"), offers quicker recovery, and equal randomness, and nearly equal speed.[57]

Marsaglia's xorshift generators and variants are the fastest in the class of LFSRs.[58]

64-bit MELGs ("64-bit Maximally Equidistributed  -Linear Generators with Mersenne Prime Period") are completely optimized in terms of the k-distribution properties.[59]

The ACORN family (published 1989) is another k-distributed PRNG, which shows similar computational speed to MT, and better statistical properties as it satisfies all the current (2019) TestU01 criteria; when used with appropriate choices of parameters, ACORN can have arbitrarily long period and precision.

The PCG family is a more modern long-period generator, with better cache locality, and less detectable bias using modern analysis methods.[60]

References edit

  1. ^ Matsumoto, M.; Nishimura, T. (1998). "Mersenne twister: a 623-dimensionally equidistributed uniform pseudo-random number generator". ACM Transactions on Modeling and Computer Simulation. 8 (1): 3–30. CiteSeerX 10.1.1.215.1141. doi:10.1145/272991.272995. S2CID 3332028.
  2. ^ E.g. Marsland S. (2011) Machine Learning (CRC Press), §4.1.1. Also see the section "Adoption in software systems".
  3. ^ John Savard. "The Mersenne Twister". A subsequent paper, published in the year 2000, gave five additional forms of the Mersenne Twister with period 2^19937-1. All five were designed to be implemented with 64-bit arithmetic instead of 32-bit arithmetic.
  4. ^ Matsumoto, M.; Kurita, Y. (1992). "Twisted GFSR generators". ACM Transactions on Modeling and Computer Simulation. 2 (3): 179–194. doi:10.1145/146382.146383. S2CID 15246234.
  5. ^ a b "std::mersenne_twister_engine". Pseudo Random Number Generation. Retrieved 2015-07-20.
  6. ^ a b . eCRYPT. Archived from the original on 2012-07-01. Retrieved 2017-11-12.
  7. ^ Matsumoto, Makoto; Nishimura, Takuji; Hagita, Mariko; Saito, Mutsuo (2005). "Cryptographic Mersenne Twister and Fubuki Stream/Block Cipher" (PDF).
  8. ^ Mutsuo Saito; Makoto Matsumoto (2010). "Variants of Mersenne Twister Suitable for Graphic Processors". arXiv:1005.4973v3 [cs.MS].
  9. ^ "SIMD-oriented Fast Mersenne Twister (SFMT)". hiroshima-u.ac.jp. Retrieved 4 October 2015.
  10. ^ "SFMT:Comparison of speed". hiroshima-u.ac.jp. Retrieved 4 October 2015.
  11. ^ "PlayStation3 License". scei.co.jp. Retrieved 4 October 2015.
  12. ^ "Tiny Mersenne Twister (TinyMT)". hiroshima-u.ac.jp. Retrieved 4 October 2015.
  13. ^ a b P. L'Ecuyer and R. Simard, "TestU01: "A C library for empirical testing of random number generators", ACM Transactions on Mathematical Software, 33, 4, Article 22 (August 2007).
  14. ^ Note: 219937 is approximately 4.3 × 106001; this is many orders of magnitude larger than the estimated number of particles in the observable universe, which is 1087.
  15. ^ Route, Matthew (August 10, 2017). "Radio-flaring Ultracool Dwarf Population Synthesis". The Astrophysical Journal. 845 (1): 66. arXiv:1707.02212. Bibcode:2017ApJ...845...66R. doi:10.3847/1538-4357/aa7ede. S2CID 118895524.
  16. ^ "SIMD-oriented Fast Mersenne Twister (SFMT): twice faster than Mersenne Twister". Japan Society for the Promotion of Science. Retrieved 27 March 2017.
  17. ^ Makoto Matsumoto; Takuji Nishimura. "Dynamic Creation of Pseudorandom Number Generators" (PDF). Retrieved 19 July 2015.
  18. ^ Hiroshi Haramoto; Makoto Matsumoto; Takuji Nishimura; François Panneton; Pierre L'Ecuyer. "Efficient Jump Ahead for F2-Linear Random Number Generators" (PDF). Retrieved 12 Nov 2015.
  19. ^ "mt19937ar: Mersenne Twister with improved initialization". hiroshima-u.ac.jp. Retrieved 4 October 2015.
  20. ^ Fog, Agner (1 May 2015). "Pseudo-Random Number Generators for Vector Processors and Multicore Processors". Journal of Modern Applied Statistical Methods. 14 (1): 308–334. doi:10.22237/jmasm/1430454120.
  21. ^ "Random link". Dyalog Language Reference Guide. Retrieved 2020-06-04.
  22. ^ "RANDOMU (IDL Reference)". Exelis VIS Docs Center. Retrieved 2013-08-23.
  23. ^ "Random Number Generators". CRAN Task View: Probability Distributions. Retrieved 2012-05-29.
  24. ^ ""Random" class documentation". Ruby 1.9.3 documentation. Retrieved 2012-05-29.
  25. ^ "random". free pascal documentation. Retrieved 2013-11-28.
  26. ^ "mt_rand — Generate a better random value". PHP Manual. Retrieved 2016-03-02.
  27. ^ "NumPy 1.17.0 Release Notes — NumPy v1.21 Manual". numpy.org. Retrieved 2021-06-29.
  28. ^ "9.6 random — Generate pseudo-random numbers". Python v2.6.8 documentation. Retrieved 2012-05-29.
  29. ^ "8.6 random — Generate pseudo-random numbers". Python v3.2 documentation. Retrieved 2012-05-29.
  30. ^ "random — Generate pseudo-random numbers — Python 3.8.3 documentation". Python 3.8.3 documentation. Retrieved 2020-06-23.
  31. ^ "Design choices and extensions". CMUCL User's Manual. Retrieved 2014-02-03.
  32. ^ "Random states". The ECL manual. Retrieved 2015-09-20.
  33. ^ "Random Number Generation". SBCL User's Manual.
  34. ^ "Random Numbers · The Julia Language". docs.julialang.org. Retrieved 2022-06-21.
  35. ^ "Random Numbers: GLib Reference Manual".
  36. ^ "Random Number Algorithms". GNU MP. Retrieved 2013-11-21.
  37. ^ "16.3 Special Utility Matrices". GNU Octave. Built-in Function: rand
  38. ^ "Random number environment variables". GNU Scientific Library. Retrieved 2013-11-24.
  39. ^ Mélard, G. (2014), "On the accuracy of statistical procedures in Microsoft Excel 2010", Computational Statistics, 29 (5): 1095–1128, CiteSeerX 10.1.1.455.5508, doi:10.1007/s00180-014-0482-5, S2CID 54032450.
  40. ^ "GAUSS 14 Language Reference" (PDF).
  41. ^ "uniform". Gretl Function Reference.
  42. ^ "New random-number generator—64-bit Mersenne Twister".
  43. ^ "Probability Distributions — Sage Reference Manual v7.2: Probablity".
  44. ^ "grand - Random numbers". Scilab Help.
  45. ^ "random number generator". Maple Online Help. Retrieved 2013-11-21.
  46. ^ "Random number generator algorithms". Documentation Center, MathWorks.
  47. ^ "Data Generation". Apache Commons Math User Guide.
  48. ^ "Random Number Generation in C++11" (PDF). Standard C++ Foundation.
  49. ^ "std::mersenne_twister_engine". Pseudo Random Number Generation. Retrieved 2012-09-25.
  50. ^ [1] Mathematica Documentation
  51. ^ "boost/random/mersenne_twister.hpp". Boost C++ Libraries. Retrieved 2012-05-29.
  52. ^ "Host API Overview". CUDA Toolkit Documentation. Retrieved 2016-08-02.
  53. ^ "G05 – Random Number Generators". NAG Library Chapter Introduction. Retrieved 2012-05-29.
  54. ^ "Random Number Generators". IBM SPSS Statistics. Retrieved 2013-11-21.
  55. ^ "Using Random-Number Functions". SAS Language Reference. Retrieved 2013-11-21.
  56. ^ Stata help: set rng -- Set which random-number generator (RNG) to use
  57. ^ P. L'Ecuyer, "Uniform Random Number Generators", International Encyclopedia of Statistical Science, Lovric, Miodrag (Ed.), Springer-Verlag, 2010.
  58. ^ "xorshift*/xorshift+ generators and the PRNG shootout".
  59. ^ Harase, S.; Kimoto, T. (2018). "Implementing 64-bit Maximally Equidistributed F2-Linear Generators with Mersenne Prime Period". ACM Transactions on Mathematical Software. 44 (3): 30:1–30:11. arXiv:1505.06582. doi:10.1145/3159444. S2CID 14923086.
  60. ^ "The PCG Paper". 27 July 2017.

Further reading edit

  • Harase, S. (2014), "On the  -linear relations of Mersenne Twister pseudorandom number generators", Mathematics and Computers in Simulation, 100: 103–113, arXiv:1301.5435, doi:10.1016/j.matcom.2014.02.002, S2CID 6984431.
  • Harase, S. (2019), "Conversion of Mersenne Twister to double-precision floating-point numbers", Mathematics and Computers in Simulation, 161: 76–83, arXiv:1708.06018, doi:10.1016/j.matcom.2018.08.006, S2CID 19777310.

External links edit

  • The academic paper for MT, and related articles by Makoto Matsumoto
  • Mersenne Twister home page, with codes in C, Fortran, Java, Lisp and some other languages
  • Mersenne Twister examples — a collection of Mersenne Twister implementations, in several programming languages - at GitHub
  • SFMT in Action: Part I – Generating a DLL Including SSE2 Support – at Code Project

mersenne, twister, general, purpose, pseudorandom, number, generator, prng, developed, 1997, makoto, matsumoto, 松本, takuji, nishimura, 西村, 拓士, name, derives, from, choice, mersenne, prime, period, length, designed, specifically, rectify, most, flaws, found, ol. The Mersenne Twister is a general purpose pseudorandom number generator PRNG developed in 1997 by Makoto Matsumoto ja 松本 眞 and Takuji Nishimura 西村 拓士 1 2 Its name derives from the choice of a Mersenne prime as its period length The Mersenne Twister was designed specifically to rectify most of the flaws found in older PRNGs The most commonly used version of the Mersenne Twister algorithm is based on the Mersenne prime 2 19937 1 displaystyle 2 19937 1 The standard implementation of that MT19937 uses a 32 bit word length There is another implementation with five variants 3 that uses a 64 bit word length MT19937 64 it generates a different sequence Contents 1 k distribution 2 Algorithmic detail 2 1 Initialization 2 2 Comparison with classical GFSR 3 Variants 4 Characteristics 5 Applications 6 Alternatives 7 References 8 Further reading 9 External linksk distribution editA pseudorandom sequence x i displaystyle x i nbsp of w bit integers of period P is said to be k distributed to v bit accuracy if the following holds Let truncv x denote the number formed by the leading v bits of x and consider P of the k v bit vectors trunc v x i trunc v x i 1 trunc v x i k 1 0 i lt P displaystyle operatorname trunc v x i operatorname trunc v x i 1 ldots operatorname trunc v x i k 1 quad 0 leq i lt P nbsp dd Then each of the 2 k v displaystyle 2 kv nbsp possible combinations of bits occurs the same number of times in a period except for the all zero combination that occurs once less often Algorithmic detail edit nbsp Visualisation of generation of pseudo random 32 bit integers using a Mersenne Twister The Extract number section shows an example where integer 0 has already been output and the index is at integer 1 Generate numbers is run when all integers have been output For a w bit word length the Mersenne Twister generates integers in the range 0 2 w 1 displaystyle 0 2 w 1 nbsp The Mersenne Twister algorithm is based on a matrix linear recurrence over a finite binary field F 2 displaystyle textbf F 2 nbsp The algorithm is a twisted generalised feedback shift register 4 twisted GFSR or TGFSR of rational normal form TGFSR R with state bit reflection and tempering The basic idea is to define a series x i displaystyle x i nbsp through a simple recurrence relation and then output numbers of the form x i T displaystyle x i T nbsp where T is an invertible F 2 displaystyle textbf F 2 nbsp matrix called a tempering matrix The general algorithm is characterized by the following quantities w word size in number of bits n degree of recurrence m middle word an offset used in the recurrence relation defining the series x displaystyle x nbsp 1 m lt n displaystyle 1 leq m lt n nbsp r separation point of one word or the number of bits of the lower bitmask 0 r w 1 displaystyle 0 leq r leq w 1 nbsp a coefficients of the rational normal form twist matrix b c TGFSR R tempering bitmasks s t TGFSR R tempering bit shifts u d l additional Mersenne Twister tempering bit shifts masks with the restriction that 2 n w r 1 displaystyle 2 nw r 1 nbsp is a Mersenne prime This choice simplifies the primitivity test and k distribution test that are needed in the parameter search The series x displaystyle x nbsp is defined as a series of w bit quantities with the recurrence relation x k n x k m x k u x k 1 l A k 0 1 displaystyle x k n x k m oplus left x k u mid x k 1 l A right qquad k 0 1 ldots nbsp where displaystyle mid nbsp denotes concatenation of bit vectors with upper bits on the left displaystyle oplus nbsp the bitwise exclusive or XOR x k u displaystyle x k u nbsp means the upper w r bits of x k displaystyle x k nbsp and x k 1 l displaystyle x k 1 l nbsp means the lower r bits of x k 1 displaystyle x k 1 nbsp The twist transformation A is defined in rational normal form as A 0 I w 1 a w 1 a w 2 a 0 displaystyle A begin pmatrix 0 amp I w 1 a w 1 amp a w 2 ldots a 0 end pmatrix nbsp with I w 1 displaystyle I w 1 nbsp as the w 1 w 1 displaystyle w 1 w 1 nbsp identity matrix The rational normal form has the benefit that multiplication by A can be efficiently expressed as remember that here matrix multiplication is being done in F 2 displaystyle textbf F 2 nbsp and therefore bitwise XOR takes the place of addition x A x 1 x 0 0 x 1 a x 0 1 displaystyle boldsymbol x A begin cases boldsymbol x gg 1 amp x 0 0 boldsymbol x gg 1 oplus boldsymbol a amp x 0 1 end cases nbsp where x 0 displaystyle x 0 nbsp is the lowest order bit of x displaystyle x nbsp As like TGFSR R the Mersenne Twister is cascaded with a tempering transform to compensate for the reduced dimensionality of equidistribution because of the choice of A being in the rational normal form Note that this is equivalent to using the matrix A where A T 1 A T displaystyle A T 1 AT nbsp for T an invertible matrix and therefore the analysis of characteristic polynomial mentioned below still holds As with A we choose a tempering transform to be easily computable and so do not actually construct T itself The tempering is defined in the case of Mersenne Twister as y x x u amp d y y y s amp b y y y t amp c z y y l displaystyle begin aligned y amp equiv x oplus x gg u And d y amp equiv y oplus y ll s And b y amp equiv y oplus y ll t And c z amp equiv y oplus y gg l end aligned nbsp where x displaystyle x nbsp is the next value from the series y displaystyle y nbsp is a temporary intermediate value and z displaystyle z nbsp is the value returned from the algorithm with displaystyle ll nbsp and displaystyle gg nbsp as the bitwise left and right shifts and amp displaystyle amp nbsp as the bitwise AND The first and last transforms are added in order to improve lower bit equidistribution From the property of TGFSR s t w 2 1 displaystyle s t geq left lfloor frac w 2 right rfloor 1 nbsp is required to reach the upper bound of equidistribution for the upper bits The coefficients for MT19937 are w n m r 32 624 397 31 a 9908B0DF 16 u d 11 FFFFFFFF 16 s b 7 9D2C5680 16 t c 15 EFC60000 16 l 18 displaystyle begin aligned w n m r amp 32 624 397 31 a amp textrm 9908B0DF 16 u d amp 11 textrm FFFFFFFF 16 s b amp 7 textrm 9D2C5680 16 t c amp 15 textrm EFC60000 16 l amp 18 end aligned nbsp Note that 32 bit implementations of the Mersenne Twister generally have d FFFFFFFF16 As a result the d is occasionally omitted from the algorithm description since the bitwise and with d in that case has no effect The coefficients for MT19937 64 are 5 w n m r 64 312 156 31 a B5026F5AA96619E9 16 u d 29 5555555555555555 16 s b 17 71D67FFFEDA60000 16 t c 37 FFF7EEE000000000 16 l 43 displaystyle begin aligned w n m r 64 312 156 31 a textrm B5026F5AA96619E9 16 u d 29 textrm 5555555555555555 16 s b 17 textrm 71D67FFFEDA60000 16 t c 37 textrm FFF7EEE000000000 16 l 43 end aligned nbsp Initialization edit The state needed for a Mersenne Twister implementation is an array of n values of w bits each To initialize the array a w bit seed value is used to supply x 0 displaystyle x 0 nbsp through x n 1 displaystyle x n 1 nbsp by setting x 0 displaystyle x 0 nbsp to the seed value and thereafter setting x i f x i 1 x i 1 w 2 i displaystyle x i f times x i 1 oplus x i 1 gg w 2 i nbsp for i displaystyle i nbsp from 1 displaystyle 1 nbsp to n 1 displaystyle n 1 nbsp The first value the algorithm then generates is based on x n displaystyle x n nbsp not on x 0 displaystyle x 0 nbsp The constant f forms another parameter to the generator though not part of the algorithm proper The value for f for MT19937 is 1812433253 The value for f for MT19937 64 is 6364136223846793005 5 Comparison with classical GFSR edit In order to achieve the 2 n w r 1 displaystyle 2 nw r 1 nbsp theoretical upper limit of the period in a TGFSR ϕ B t displaystyle phi B t nbsp must be a primitive polynomial ϕ B t displaystyle phi B t nbsp being the characteristic polynomial of B 0 I w 0 0 I w 0 0 I w 0 0 0 0 I w r S 0 0 0 m th row displaystyle B begin pmatrix 0 amp I w amp cdots amp 0 amp 0 vdots amp amp amp amp I w amp vdots amp ddots amp vdots amp vdots vdots amp amp amp amp 0 amp 0 amp cdots amp I w amp 0 0 amp 0 amp cdots amp 0 amp I w r S amp 0 amp cdots amp 0 amp 0 end pmatrix begin matrix leftarrow m text th row end matrix nbsp S 0 I r I w r 0 A displaystyle S begin pmatrix 0 amp I r I w r amp 0 end pmatrix A nbsp The twist transformation improves the classical GFSR with the following key properties The period reaches the theoretical upper limit 2 n w r 1 displaystyle 2 nw r 1 nbsp except if initialized with 0 Equidistribution in n dimensions e g linear congruential generators can at best manage reasonable distribution in five dimensions Variants editCryptMT is a stream cipher and cryptographically secure pseudorandom number generator which uses Mersenne Twister internally 6 7 It was developed by Matsumoto and Nishimura alongside Mariko Hagita and Mutsuo Saito It has been submitted to the eSTREAM project of the eCRYPT network 6 Unlike Mersenne Twister or its other derivatives CryptMT is patented MTGP is a variant of Mersenne Twister optimised for graphics processing units published by Mutsuo Saito and Makoto Matsumoto 8 The basic linear recurrence operations are extended from MT and parameters are chosen to allow many threads to compute the recursion in parallel while sharing their state space to reduce memory load The paper claims improved equidistribution over MT and performance on an old 2008 era GPU Nvidia GTX260 with 192 cores of 4 7 ms for 5 107 random 32 bit integers The SFMT SIMD oriented Fast Mersenne Twister is a variant of Mersenne Twister introduced in 2006 9 designed to be fast when it runs on 128 bit SIMD It is roughly twice as fast as Mersenne Twister 10 It has a better equidistribution property of v bit accuracy than MT but worse than WELL Well Equidistributed Long period Linear It has quicker recovery from zero excess initial state than MT but slower than WELL It supports various periods from 2607 1 to 2216091 1 Intel SSE2 and PowerPC AltiVec are supported by SFMT It is also used for games with the Cell BE in the PlayStation 3 11 TinyMT is a variant of Mersenne Twister proposed by Saito and Matsumoto in 2011 12 TinyMT uses just 127 bits of state space a significant decrease compared to the original s 2 5 KiB of state However it has a period of 2 127 1 displaystyle 2 127 1 nbsp far shorter than the original so it is only recommended by the authors in cases where memory is at a premium Characteristics editThis section contains a pro and con list Please help rewriting it into consolidated sections based on topics March 2024 Advantages Permissively licensed and patent free for all variants except CryptMT Passes numerous tests for statistical randomness including the Diehard tests and most but not all of the TestU01 tests 13 A very long period of 2 19937 1 displaystyle 2 19937 1 nbsp Note that a long period is not a guarantee of quality in a random number generator short periods such as the 2 32 displaystyle 2 32 nbsp common in many older software packages can be problematic 14 k distributed to 32 bit accuracy for every 1 k 623 displaystyle 1 leq k leq 623 nbsp for a definition of k distributed see below Implementations generally create random numbers faster than hardware implemented methods A study found that the Mersenne Twister creates 64 bit floating point random numbers approximately twenty times faster than the hardware implemented processor based RDRAND instruction set 15 Disadvantages Relatively large state buffer of almost 2 5 kB unless the TinyMT variant is used Mediocre throughput by modern standards unless the SFMT variant discussed below is used 16 Exhibits two clear failures linear complexity in both Crush and BigCrush in the TestU01 suite The test like Mersenne Twister is based on an F 2 displaystyle textbf F 2 nbsp algebra 13 Multiple instances that differ only in seed value but not other parameters are not generally appropriate for Monte Carlo simulations that require independent random number generators though there exists a method for choosing multiple sets of parameter values 17 18 Poor diffusion can take a long time to start generating output that passes randomness tests if the initial state is highly non random particularly if the initial state has many zeros A consequence of this is that two instances of the generator started with initial states that are almost the same will usually output nearly the same sequence for many iterations before eventually diverging The 2002 update to the MT algorithm has improved initialization so that beginning with such a state is very unlikely 19 The GPU version MTGP is said to be even better 20 Contains subsequences with more 0 s than 1 s This adds to the poor diffusion property to make recovery from many zero states difficult Is not cryptographically secure unless the CryptMT variant discussed below is used The reason is that observing a sufficient number of iterations 624 in the case of MT19937 since this is the size of the state vector from which future iterations are produced allows one to predict all future iterations Applications editThe Mersenne Twister is used as default PRNG by the following software Programming languages Dyalog APL 21 IDL 22 R 23 Ruby 24 Free Pascal 25 PHP 26 Python also available in NumPy however the default was changed to PCG64 instead as of version 1 17 27 28 29 30 CMU Common Lisp 31 Embeddable Common Lisp 32 Steel Bank Common Lisp 33 Julia up to Julia 1 6 LTS still available in later but a better faster RNG used by default as of 1 7 34 Linux libraries and software GLib 35 GNU Multiple Precision Arithmetic Library 36 GNU Octave 37 GNU Scientific Library 38 Other Microsoft Excel 39 GAUSS 40 gretl 41 Stata 42 SageMath 43 Scilab 44 Maple 45 MATLAB 46 It is also available in Apache Commons 47 in the standard C library since C 11 48 49 and in Mathematica 50 Add on implementations are provided in many program libraries including the Boost C Libraries 51 the CUDA Library 52 and the NAG Numerical Library 53 The Mersenne Twister is one of two PRNGs in SPSS the other generator is kept only for compatibility with older programs and the Mersenne Twister is stated to be more reliable 54 The Mersenne Twister is similarly one of the PRNGs in SAS the other generators are older and deprecated 55 The Mersenne Twister is the default PRNG in Stata the other one is KISS for compatibility with older versions of Stata 56 Alternatives editAn alternative generator WELL Well Equidistributed Long period Linear offers quicker recovery and equal randomness and nearly equal speed 57 Marsaglia s xorshift generators and variants are the fastest in the class of LFSRs 58 64 bit MELGs 64 bit Maximally Equidistributed F 2 displaystyle textbf F 2 nbsp Linear Generators with Mersenne Prime Period are completely optimized in terms of the k distribution properties 59 The ACORN family published 1989 is another k distributed PRNG which shows similar computational speed to MT and better statistical properties as it satisfies all the current 2019 TestU01 criteria when used with appropriate choices of parameters ACORN can have arbitrarily long period and precision The PCG family is a more modern long period generator with better cache locality and less detectable bias using modern analysis methods 60 References edit Matsumoto M Nishimura T 1998 Mersenne twister a 623 dimensionally equidistributed uniform pseudo random number generator ACM Transactions on Modeling and Computer Simulation 8 1 3 30 CiteSeerX 10 1 1 215 1141 doi 10 1145 272991 272995 S2CID 3332028 E g Marsland S 2011 Machine Learning CRC Press 4 1 1 Also see the section Adoption in software systems John Savard The Mersenne Twister A subsequent paper published in the year 2000 gave five additional forms of the Mersenne Twister with period 2 19937 1 All five were designed to be implemented with 64 bit arithmetic instead of 32 bit arithmetic Matsumoto M Kurita Y 1992 Twisted GFSR generators ACM Transactions on Modeling and Computer Simulation 2 3 179 194 doi 10 1145 146382 146383 S2CID 15246234 a b std mersenne twister engine Pseudo Random Number Generation Retrieved 2015 07 20 a b CryptMt and Fubuki eCRYPT Archived from the original on 2012 07 01 Retrieved 2017 11 12 Matsumoto Makoto Nishimura Takuji Hagita Mariko Saito Mutsuo 2005 Cryptographic Mersenne Twister and Fubuki Stream Block Cipher PDF Mutsuo Saito Makoto Matsumoto 2010 Variants of Mersenne Twister Suitable for Graphic Processors arXiv 1005 4973v3 cs MS SIMD oriented Fast Mersenne Twister SFMT hiroshima u ac jp Retrieved 4 October 2015 SFMT Comparison of speed hiroshima u ac jp Retrieved 4 October 2015 PlayStation3 License scei co jp Retrieved 4 October 2015 Tiny Mersenne Twister TinyMT hiroshima u ac jp Retrieved 4 October 2015 a b P L Ecuyer and R Simard TestU01 A C library for empirical testing of random number generators ACM Transactions on Mathematical Software 33 4 Article 22 August 2007 Note 219937 is approximately 4 3 106001 this is many orders of magnitude larger than the estimated number of particles in the observable universe which is 1087 Route Matthew August 10 2017 Radio flaring Ultracool Dwarf Population Synthesis The Astrophysical Journal 845 1 66 arXiv 1707 02212 Bibcode 2017ApJ 845 66R doi 10 3847 1538 4357 aa7ede S2CID 118895524 SIMD oriented Fast Mersenne Twister SFMT twice faster than Mersenne Twister Japan Society for the Promotion of Science Retrieved 27 March 2017 Makoto Matsumoto Takuji Nishimura Dynamic Creation of Pseudorandom Number Generators PDF Retrieved 19 July 2015 Hiroshi Haramoto Makoto Matsumoto Takuji Nishimura Francois Panneton Pierre L Ecuyer Efficient Jump Ahead for F2 Linear Random Number Generators PDF Retrieved 12 Nov 2015 mt19937ar Mersenne Twister with improved initialization hiroshima u ac jp Retrieved 4 October 2015 Fog Agner 1 May 2015 Pseudo Random Number Generators for Vector Processors and Multicore Processors Journal of Modern Applied Statistical Methods 14 1 308 334 doi 10 22237 jmasm 1430454120 Random link Dyalog Language Reference Guide Retrieved 2020 06 04 RANDOMU IDL Reference Exelis VIS Docs Center Retrieved 2013 08 23 Random Number Generators CRAN Task View Probability Distributions Retrieved 2012 05 29 Random class documentation Ruby 1 9 3 documentation Retrieved 2012 05 29 random free pascal documentation Retrieved 2013 11 28 mt rand Generate a better random value PHP Manual Retrieved 2016 03 02 NumPy 1 17 0 Release Notes NumPy v1 21 Manual numpy org Retrieved 2021 06 29 9 6 random Generate pseudo random numbers Python v2 6 8 documentation Retrieved 2012 05 29 8 6 random Generate pseudo random numbers Python v3 2 documentation Retrieved 2012 05 29 random Generate pseudo random numbers Python 3 8 3 documentation Python 3 8 3 documentation Retrieved 2020 06 23 Design choices and extensions CMUCL User s Manual Retrieved 2014 02 03 Random states The ECL manual Retrieved 2015 09 20 Random Number Generation SBCL User s Manual Random Numbers The Julia Language docs julialang org Retrieved 2022 06 21 Random Numbers GLib Reference Manual Random Number Algorithms GNU MP Retrieved 2013 11 21 16 3 Special Utility Matrices GNU Octave Built in Function rand Random number environment variables GNU Scientific Library Retrieved 2013 11 24 Melard G 2014 On the accuracy of statistical procedures in Microsoft Excel 2010 Computational Statistics 29 5 1095 1128 CiteSeerX 10 1 1 455 5508 doi 10 1007 s00180 014 0482 5 S2CID 54032450 GAUSS 14 Language Reference PDF uniform Gretl Function Reference New random number generator 64 bit Mersenne Twister Probability Distributions Sage Reference Manual v7 2 Probablity grand Random numbers Scilab Help random number generator Maple Online Help Retrieved 2013 11 21 Random number generator algorithms Documentation Center MathWorks Data Generation Apache Commons Math User Guide Random Number Generation in C 11 PDF Standard C Foundation std mersenne twister engine Pseudo Random Number Generation Retrieved 2012 09 25 1 Mathematica Documentation boost random mersenne twister hpp Boost C Libraries Retrieved 2012 05 29 Host API Overview CUDA Toolkit Documentation Retrieved 2016 08 02 G05 Random Number Generators NAG Library Chapter Introduction Retrieved 2012 05 29 Random Number Generators IBM SPSS Statistics Retrieved 2013 11 21 Using Random Number Functions SAS Language Reference Retrieved 2013 11 21 Stata help set rng Set which random number generator RNG to use P L Ecuyer Uniform Random Number Generators International Encyclopedia of Statistical Science Lovric Miodrag Ed Springer Verlag 2010 xorshift xorshift generators and the PRNG shootout Harase S Kimoto T 2018 Implementing 64 bit Maximally Equidistributed F2 Linear Generators with Mersenne Prime Period ACM Transactions on Mathematical Software 44 3 30 1 30 11 arXiv 1505 06582 doi 10 1145 3159444 S2CID 14923086 The PCG Paper 27 July 2017 Further reading editHarase S 2014 On the F 2 displaystyle mathbb F 2 nbsp linear relations of Mersenne Twister pseudorandom number generators Mathematics and Computers in Simulation 100 103 113 arXiv 1301 5435 doi 10 1016 j matcom 2014 02 002 S2CID 6984431 Harase S 2019 Conversion of Mersenne Twister to double precision floating point numbers Mathematics and Computers in Simulation 161 76 83 arXiv 1708 06018 doi 10 1016 j matcom 2018 08 006 S2CID 19777310 External links editThe academic paper for MT and related articles by Makoto Matsumoto Mersenne Twister home page with codes in C Fortran Java Lisp and some other languages Mersenne Twister examples a collection of Mersenne Twister implementations in several programming languages at GitHub SFMT in Action Part I Generating a DLL Including SSE2 Support at Code Project Retrieved from https en wikipedia org w index php title Mersenne Twister amp oldid 1226343803, wikipedia, wiki, book, books, library,

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