多因子PSO与多因子DE的实证研究

Liang Feng, Wei Zhou, Lei Zhou, Siwei Jiang, J. Zhong, B. Da, Zexuan Zhu, Yang Wang
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引用次数: 90

摘要

最近,多因子优化(Multifactorial Optimization, MFO)的概念已经成为一种很有前途的进化多任务方法,它通过自动利用优化问题之间的潜在协同作用,只需在统一的表示空间中一起解决它们[1]。它旨在通过在多个优化问题之间无缝地传递知识来提高多个优化问题的收敛特性。文献[1]通过染色体交叉隐性遗传转移这一特定的知识转移模式研究了MFO的有效性。在本文中,我们进一步探讨了不同种群搜索机制下MFO的通用性。特别地,在本文中,我们首次尝试使用流行的粒子群优化和差分进化搜索来进行最优解。提出了多因子粒子群优化(MFPSO)和多因子差分进化(MFDE)两种具体的多任务范式。为了评价MFPSO和MFDE的性能,对9个单目标MFO基准问题进行了全面的实证研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An empirical study of multifactorial PSO and multifactorial DE
Recently, the notion of Multifactorial Optimization (MFO) has emerged as a promising approach for evolutionary multi-tasking by automatically exploiting the latent synergies between optimization problems, simply through solving them together in an unified representation space [1]. It aims to improve convergence characteristics across multiple optimization problems at once by seamlessly transferring knowledge between them. In [1], the efficacy of MFO has been studied by a specific mode of knowledge transfer in the form of implicit genetic transfer through chromosomal crossover. Here we further explore the generality of MFO when diverse population based search mechanisms are employed. In particular, in this paper, we present the first attempt to conduct MFO with the popular particle swarm optimization and differential evolution search. Two specific multi-tasking paradigms, namely multifactorial particle swarm optimization (MFPSO) and multifactorial differential evolution (MFDE) are proposed. To evaluate the performance of MFPSO and MFDE, comprehensive empirical studies on 9 single objective MFO benchmark problems are provided.
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