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Sustaining Behavioral Diversity in NEAT

机译:在NEAT中维持行为多样性

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摘要

Niching schemes, which sustains population diversity and let an evolutionary population avoid premature convergence, have been extensively studied in the research field of evolutionary algorithms. Neuroevolutionary (NE) algorithms, such as NEAT, have also benefitted from niching. However, the latest research indicates that the use of genotype-or phenotype-similarity-based niching schemes in NE algorithms is not highly effective because these schemes have difficulty sustaining the behavioral diversity in the environment. In this paper, we propose a novel niching scheme that takes into consideration both the phenotypic and behavioral diversity, and then integrate it with NEAT. An experimental analysis revealed that the proposed algorithm outperforms the original NEAT for various problem settings. More interestingly, it performs especially well for problems with a high noise level and large state space. Since these features are common in problems to which NEAT is applied, the proposed algorithm should be effective in practice.
机译:维持种群多样性并让进化种群避免过早收敛的小生境方案已在进化算法的研究领域中得到了广泛的研究。诸如NEAT之类的神经进化(NE)算法也受益于利基。然而,最新研究表明,在NE算法中使用基于基因型或表型相似性的小生境方案并不是很有效,因为这些方案难以维持环境中的行为多样性。在本文中,我们提出了一种新颖的小生境方案,该方案同时考虑了表型和行为多样性,然后将其与NEAT集成在一起。实验分析表明,针对各种问题设置,该算法优于原始的NEAT算法。更有趣的是,对于具有高噪声水平和大状态空间的问题,它的性能特别好。由于这些特征在应用NEAT的问题中很常见,因此所提出的算法在实践中应该是有效的。

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