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Abstract algebra / Normal distribution / Pseudorandomness / Random number generation / Linear congruential generator / Primitive polynomial / Distribution / Mathematics / Mathematical analysis / Pseudorandom number generators
Date: 2006-03-03 17:05:47
Abstract algebra
Normal distribution
Pseudorandomness
Random number generation
Linear congruential generator
Primitive polynomial
Distribution
Mathematics
Mathematical analysis
Pseudorandom number generators

Twisted GFSR Generators Makoto Matsumoto Research Institute for Mathematical Sciences Kyoto University, Kyoto 606 Japan and Yoshiharu Kurita

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Source URL: www.math.sci.hiroshima-u.ac.jp

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