再论多种群遗传算法的自适应迁移方案设计

Wen-Yang Lin, T. Hong, Shu-Min Liu, Jiann-Horng Lin
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引用次数: 7

摘要

多种群遗传算法(MGAs)是由空间上半孤立的亚种群组成的岛屿模型遗传算法,每个亚种群以自己的速度并行进化,偶尔通过交换(通常是好的)个体与邻近种群相互作用,称为迁移。由于迁移过程是MGAs防止过早收敛的核心机制,以往的许多研究都致力于设计好的迁移方案,包括迁移政策、迁移间隔和迁移率,但很少有研究关注迁移方案的适应性方面。本研究从有利于解决方案质量的适应度和维持种群多样性的多样性两个角度审视了适应性迁移方案的设计,并提出了基于适应度和基于多样性的两种新的适应迁移方案。对0/1背包问题的初步实验表明,两种新方法都优于我们之前的方法,并且基于多样性的方法比基于适应度的方法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revisiting the Design of Adaptive Migration Schemes for Multipopulation Genetic Algorithms
Multipopulation Genetic Algorithms (MGAs) are island model genetic algorithms composed of spatially semi-isolated sub-populations, each evolving in parallel by its own pace and occasionally interacting with its neighborhoods by interchanging (usually good) individuals, called migration. Since the migration process is the kernel mechanism of MGAs for preventing premature convergence, many previous works have been devoted to the design of good migration schemes, including migration policy, migration interval, and migration rate, but very few work focusing on adaptive aspect of the migration schemes. In this study, we revisit this problem by inspecting the design of adaptive migration schemes from two perspectives, fitness-based, i.e., favoring the solution quality, or diversity-based, i.e., sustaining population diversity, and thereby we propose two new adaptive migration schemes, one is fitness-based and the other is diversity-based. A preliminary experiment on 0/1 knapsack problem shows that both of the new approaches are better than our previous methods, and the diversity-based approach is more effective than the fitness-based approach.
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