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Ensemble selection for evolutionary learning using information theory and price's theorem

机译:使用信息论和价格定理进行进化学习的集合选择

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This paper presents an information theoretic perspective on design and analysis of evolutionary algorithms. Indicators of solution quality are developed and applied not only to individuals but also to ensembles, thereby ensuring information diversity. Price's Theorem is extended to show how joint indicators can drive reproductive sampling rate of potential parental pairings. Heritability of mutual information is identified as a key issue.
机译:本文提出了关于进化算法设计和分析的信息理论观点。开发解决方案质量的指标,不仅将其应用于个人,而且还将应用于群体,从而确保信息的多样性。定价定理得到扩展,以显示联合指标如何驱动潜在父母配对的生殖抽样率。互信息的遗传性被确定为关键问题。

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