概括性
水准点(测量)
计算机科学
粒子群优化
差异进化
渡线
人口
元启发式
趋同(经济学)
最优化问题
进化计算
多群优化
数学优化
机器学习
人工智能
数学
算法
人口学
经济
心理学
地理
心理治疗师
社会学
大地测量学
经济增长
作者
Liang Feng,Wei Zhou,Lei Zhou,Siwei Jiang,Jinghui Zhong,Bingshui Da,Zixin Zhu,Y. Wang
标识
DOI:10.1109/cec.2017.7969407
摘要
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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