A Multiobjective Evolutionary Multitasking Algorithm Based on Decomposition and Multiple Knowledge Transfer

Zhongjian Wu, Qingling Zhu, Jianyong Chen
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引用次数: 1

Abstract

Multiobjective evolutionary multitasking (MOEMT) has become very popular in recent years, as this kind of methods aims to solve a set of multiobjective optimization problems (MOPs) simultaneously, which has been validated to be more promising than the traditional way that solves MOPs separately. However, most existing studies of MOEMT solve the MOP as a whole and use one single knowledge transfer strategy for solving all tasks, which is not so efficient as the MOP could be further decomposed into a set of subproblems and needs different strategies for knowledge transfer. To solve this problem, this paper suggests a new MOEMT algorithm (MOEMTA) based on decomposition and multiple knowledge transfer (MOEMTA-DM). First, the decomposition method is used to transform an MOP in each task into a set of subproblems, and the subproblems with greater performance improvement are chosen. Then their associated solutions will be selected to run multiple knowledge transfer strategies via both implicit and explicit ways, which can share the useful search experience between tasks. This way, computational resources can be adaptively assigned to speed up the solving of all tasks and the effect of knowledge transfer among all tasks can be improved. The effectiveness of the proposed algorithm was verified by studying benchmark multitasking MOPs (MTMOPs). Experimental results showed the proposed algorithm is more effective than other compared MOEMT algorithms.
基于分解和多重知识转移的多目标进化多任务算法
多目标进化多任务(MOEMT)是近年来非常流行的一种多目标优化方法,它旨在同时解决一组多目标优化问题,并被证明比单独解决多目标优化问题的传统方法更有前途。然而,现有的MOEMT研究大多将MOP作为一个整体来解决,使用单一的知识转移策略来解决所有的任务,效率不高,因为MOP可能进一步分解成一组子问题,需要不同的知识转移策略。为了解决这一问题,本文提出了一种新的基于分解和多重知识转移的MOEMT算法(MOEMTA- dm)。首先,采用分解方法将每个任务中的一个MOP转化为一组子问题,选择性能提升较大的子问题;然后选择它们的关联解决方案,通过隐式和显式两种方式运行多种知识转移策略,从而在任务之间共享有用的搜索经验。这样可以自适应地分配计算资源,加快所有任务的求解速度,提高任务间知识转移的效果。通过对基准多任务MOPs (mtops)的研究,验证了该算法的有效性。实验结果表明,该算法比其他MOEMT算法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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