通过种群规模管理提高ECGA效率

V. V. D. Melo, Thyago Duque, A. Delbem
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引用次数: 3

摘要

本文对种群规模管理进行了描述和分析,以提高扩展紧凑遗传算法(ECGA)的效率。ECGA是一种选择重组算法,它需要足够的采样来生成问题的高质量模型。种群规模管理通过将算法分为两个阶段,减少了优化过程的总体运行时间:首先,使用大种群构建问题的高质量模型;其次,它生成一个较小的总体,使用高质量模型进行抽样,并在减少总体规模的情况下执行剩余的优化。研究表明,对于可分解优化问题,种群规模管理可以显著提高优化速度,在保持相同精度和可靠性的情况下,ECGA收敛评估次数减少了30% ~ 70%。此外,使用PSM的ECGA具有与ECGA相同的可扩展性模型。
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Efficiency Enhancement of ECGA Through Population Size Management
This paper describes and analyzes population size management, which can be used to enhance the efficiency of the extended compact genetic algorithm (ECGA). The ECGA is a selectorecombinative algorithm that requires an adequate sampling to generate a high-quality model of the problem. Population size management decreases the overall running time of the optimization process by splitting the algorithm into two phases: first, it builds a high-quality model of the problem using a large population; second, it generates a smaller population, sampled using the high-quality model, and performs the remaining of the optimization with a reduced population size. The paper shows that for decomposable optimization problems, population size management leads to a significant optimization speedup that decreases the number of evaluations for convergence in ECGA by a factor of 30% to 70% keeping the same accuracy and reliability. Furthermore, the ECGA using PSM presents the same scalability model as the ECGA.
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