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On Restricting Real-Valued Genotypes in Evolutionary Algorithms

机译:关于在进化算法中限制真实估值的基因型

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摘要

Real-valued genotypes together with the variation operators, mutation and crossover, constitute some of the fundamental building blocks of Evolutionary Algorithms. Real-valued genotypes are utilized in a broad range of contexts, from weights in Artificial Neural Networks to parameters in robot control systems. Shared between most uses of real-valued genomes is the need for limiting the range of individual parameters to allowable bounds. In this paper we will illustrate the challenge of limiting the parameters of real-valued genomes and analyse the most promising method to properly limit these values. We utilize both empirical as well as benchmark examples to demonstrate the utility of the proposed method and through a literature review show how the insight of this paper could impact other research within the field. The proposed method requires minimal intervention from Evolutionary Algorithm practitioners and behaves well under repeated application of variation operators, leading to better theoretical properties as well as significant differences in well-known benchmarks.
机译:实验性基因型与变异操作员,突变和交叉一起,构成了进化算法的一些基本构建块。实验性基因型在广泛的上下文中使用,从人工神经网络中的重量到机器人控制系统中的参数。在大多数使用的真实基因组的使用之间共享是需要将个别参数的范围限制为允许的界限。在本文中,我们将说明限制实值基因组参数的挑战,并分析最有希望的方法以适当限制这些值。我们利用实证和基准示例来展示所提出的方法的效用,并通过文献综述展示本文的洞察力如何影响该领域的其他研究。该方法需要从进化算法从业者的干预措施最小化,并且在重复应用变化运算符下表现得很好,从而导致了更好的理论特性以及众所周知的基准中的显着差异。

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