通过确定性种群收缩改进遗传算法的性能

J. L. Laredo, C. Fernandes, J. J. M. Guervós, Christian Gagné
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引用次数: 33

摘要

尽管直觉认为在进化算法(EA)的整个运行过程中不需要相同的种群大小,但大多数EA使用固定的种群大小。本文对简单可变种群规模(SVPS)方案对遗传算法(GAs)性能可能带来的好处进行了实证研究。它包括按照预定的时间表减少遗传算法运行的种群,该时间表由速度和严重性参数配置。该方法使用一个固定大小的选择重组遗传算法,在一定的置信区间内收敛到特定问题的最佳解,作为初始种群大小的估计,以提供足够的构建块所需的最小大小。根据该方法,对欺骗性、准欺骗性和非欺骗性陷阱函数进行了可扩展性分析,以评估在不同的问题实例和难度级别下,与固定大小的遗传算法相比,SVPS-GA是否提高了性能。结果显示了几种速度-严重性的组合,其中SVPS-GA通过减少成功所需的评估次数,在保持解决方案质量的同时提高了性能。
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Improving genetic algorithms performance via deterministic population shrinkage
Despite the intuition that the same population size is not needed throughout the run of an Evolutionary Algorithm (EA), most EAs use a fixed population size. This paper presents an empirical study on the possible benefits of a Simple Variable Population Sizing (SVPS) scheme on the performance of Genetic Algorithms (GAs). It consists in decreasing the population for a GA run following a predetermined schedule, configured by a speed and a severity parameter. The method uses as initial population size an estimation of the minimum size needed to supply enough building blocks, using a fixed-size selectorecombinative GA converging within some confidence interval toward good solutions for a particular problem. Following this methodology, a scalability analysis is conducted on deceptive, quasi-deceptive, and non-deceptive trap functions in order to assess whether SVPS-GA improves performances compared to a fixed-size GA under different problem instances and difficulty levels. Results show several combinations of speed-severity where SVPS-GA preserves the solution quality while improving performances, by reducing the number of evaluations needed for success.
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