局部搜索对平衡表示遗传算法的影响

Bioma Pub Date : 2022-06-22 DOI:10.48550/arXiv.2206.10974
L. Manzoni, L. Mariot, Eva Tuba
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引用次数: 2

摘要

我们继续研究遗传算法在候选解需要满足平衡约束的组合优化问题上的应用。已经观察到,通过自定义交叉和突变算子减小搜索空间大小通常不会转化为遗传算法性能的实质性改进。对于这一现象仍然没有明确的解释,尽管有人怀疑平衡的表示可能会产生更不规则的适应度景观,在那里遗传算法可能更难以收敛到全局最优。在本文中,我们通过在带有平衡算子的遗传算法中增加一个局部搜索步骤来研究这个问题,并用它来进化高度非线性的平衡布尔函数。特别是,我们围绕两个研究问题组织实验,即局部搜索是否(1)提高了遗传算法的收敛速度,(2)降低了种群多样性。令人惊讶的是,虽然我们的结果肯定地回答了第一个问题,但它们也表明,增加本地搜索实际上增加了种群中个体的多样性。我们将这些发现与布尔函数问题的适应度景观分析的一些最新结果联系起来。
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 Local Search over Genetic Algorithms with Balanced Representations
We continue the study of Genetic Algorithms (GA) on combinatorial optimization problems where the candidate solutions need to satisfy a balancedness constraint. It has been observed that the reduction of the search space size granted by ad-hoc crossover and mutation operators does not usually translate to a substantial improvement of the GA performances. There is still no clear explanation of this phenomenon, although it is suspected that a balanced representation might yield a more irregular fitness landscape, where it could be more difficult for GA to converge to a global optimum. In this paper, we investigate this issue by adding a local search step to a GA with balanced operators, and use it to evolve highly nonlinear balanced Boolean functions. In particular, we organize our experiments around two research questions, namely if local search (1) improves the convergence speed of GA, and (2) decreases the population diversity. Surprisingly, while our results answer affirmatively the first question, they also show that adding local search actually increases the diversity among the individuals in the population. We link these findings to some recent results on fitness landscape analysis for problems on Boolean functions.
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