Evolutionary Programming using a mixed strategy with incomplete information

Liang Shen, Jun He
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引用次数: 2

Abstract

Evolutionary Programming (EP) has been modified in various ways. In particular, modifications of the mutation operator have been proved to be capable of significantly improving the performance of EP. However, while each of proposed mutation operators (e.g. Gaussian mutation and Cauchy mutation) may be suitable for solving certain types of problem, none of them are suitable for all problems. Mixed strategies have therefore been proposed in order to combine the advantages of different operators. The design of a mixed strategy is currently based on the premise that complete and perfect information is held for each mutation operator in the mixed strategy such that the payoff functions to each pure strategy are common knowledge. This paper presents a modified mixed strategy (IMEP) involving a process with incomplete information. Experimental results show that IMEP outperforms pure strategy algorithms in spite of the lack of information. The experiments also show that the results are similar to those generated by the original algorithm, which was complete information.
采用不完全信息混合策略的进化规划
进化规划(Evolutionary Programming, EP)被以各种方式修改过。特别是,对突变算子的修改已被证明能够显著提高EP的性能。然而,虽然提出的每一种突变算子(例如高斯突变和柯西突变)都可能适用于解决某些类型的问题,但它们都不适合解决所有问题。因此,为了结合不同运营商的优势,提出了混合策略。目前混合策略的设计是基于混合策略中每个突变算子的信息都是完全和完美的,使得每个纯策略的收益函数都是公知。提出了一种包含不完全信息过程的改进混合策略(IMEP)。实验结果表明,在缺乏信息的情况下,IMEP算法优于纯策略算法。实验结果表明,该算法得到的结果与原算法相近,是完整的信息。
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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