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An empirical investigation of how and why neutrality affects evolutionary search

机译:关于中性如何以及为什么影响进化搜索的实证研究

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The effects of neutrality on evolutionary search have been considered in a number of studies, the results of which, however, have been contradictory. Some have found neutrality to be beneficial to aid evolution whereas others have argued that neutrality in the evolutionary process is useless. We believe that this confusion is due to several reasons: many studies have based their conclusions on performance statistics rather than a more in-depth analysis of population dynamics, studies often consider problems, representations and search algorithms that are relatively complex and so results represent the compositions of multiple effects, there is not a single definition of neutrality and different studies have added neutrality to problems in radically different ways. In this paper, we try to shed some light on neutrality by addressing these problems. That is, we use the simplest possible definition of neutrality (a neutral network of constant fitness, identically distributed in the whole search space), we consider one of the simplest possible algorithms (a mutation based, binary genetic algorithm) applied to two simple problems (a unimodal landscape and a deceptive landscape), and analyse both performance figures and, critically, population flows from and to the neutral network and the basins of attraction of the optima.
机译:在许多研究中都考虑了中立性对进化搜索的影响,然而,其结果却是矛盾的。一些人发现中立有利于进化,而另一些人则认为进化过程中的中立是无用的。我们认为,造成这种混淆的原因有很多:许多研究的结论是基于绩效统计数据,而不是对人口动态进行更深入的分析,研究通常会考虑相对复杂的问题,表示形式和搜索算法,因此结果代表了在没有多重定义的情况下,对中立性没有一个统一的定义,不同的研究以根本不同的方式为问题增添了中立性。在本文中,我们试图通过解决这些问题来阐明中立性。也就是说,我们使用最简单的中性定义(恒定适应性的中性网络,在整个搜索空间中均等分布),我们考虑了适用于两个简单问题的最简单的算法之一(基于变异的二进制遗传算法) (单峰景观和欺骗性景观),并分析绩效数据,以及至关重要的是,分析人口从中性网络和最优渠道吸引的流入和流出。

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