On the design of state-of-the-art pseudorandom number generators by means of genetic programming

J. Castro, André Seznec, P. I. Viñuela
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引用次数: 14

Abstract

The design of pseudorandom number generators by means of evolutionary computation is a classical problem. Today, it has been mostly and better accomplished by means of cellular automata and not many proposals, inside or outside this paradigm could claim to be both robust (passing all the statistical tests, including the most demanding ones) and fast, as is the case of the proposal we present here. Furthermore, for obtaining these generators, we use a radical approach, where our fitness function is not at all based in any measure of randomness, as is frequently the case in the literature, but of nonlinearity. Efficiency is assured by using only very efficient operators (both in hardware and software) and by limiting the number of terminals in the genetic programming implementation.
用遗传规划方法设计最先进的伪随机数发生器
利用进化计算方法设计伪随机数生成器是一个经典问题。今天,它主要是通过元胞自动机来完成的,并且没有多少提案,在这个范式内部或外部,可以声称既健壮(通过所有统计测试,包括最苛刻的测试)又快速,就像我们在这里提出的提案一样。此外,为了获得这些生成器,我们使用了一种激进的方法,其中我们的适应度函数根本不是基于任何随机性度量,就像文献中经常出现的情况一样,而是基于非线性。通过只使用非常高效的操作符(硬件和软件)以及在遗传编程实现中限制终端的数量来保证效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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