岛屿模型遗传算法中噪声对多亲本交叉的影响

Brahim Aboutaib, Andrew M. Sutton
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引用次数: 0

摘要

进化算法解决的许多优化问题不仅计算成本高,而且具有一个或多个噪声源。处理高计算开销的一种技术是并行化。然而,尽管现有的文献对并行进化算法的预期行为给出了很好的见解,但我们仍然缺乏对它们在噪声存在下的性能的理解。本文考虑了如何利用并行化和多父交叉来处理噪声问题。我们提出了一个具有弱连接拓扑的岛模型的严格运行时间分析,该模型在一般加性噪声(即嘈杂的OneMax)的存在下具有爬坡任务。我们的证据对噪音强度和所需父母数量之间的关系产生了深刻的见解。我们将其转化为两种多父交叉算子的正负结果。然后,我们对该框架进行了实证分析和扩展,以研究噪声影响、优化时间和处理噪声的计算能力限制之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Influence of Noise on Multi-Parent Crossover for an Island Model Genetic Algorithm
Many optimization problems tackled by evolutionary algorithms are not only computationally expensive, but also complicated with one or more sources of noise. One technique to deal with high computational overhead is parallelization. However, though the existing literature gives good insights about the expected behavior of parallelized evolutionary algorithms, we still lack an understanding of their performance in the presence of noise. This paper considers how parallelization might be leveraged together with multi-parent crossover in order to handle noisy problems. We present a rigorous running time analysis of an island model with weakly connected topology tasked with hill climbing in the presence of general additive noise (i.e., noisy OneMax ). Our proofs yield insights into the relationship between the noise intensity and number of required parents. We translate this into positive and negative results for two kinds of multi-parent crossover operators. We then empirically analyze and extend this framework to investigate the trade-offs between noise impact, optimization time, and limits of computation power to deal with noise.
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