作者
Zefeng Chen, Abhishek Gupta, Lei Zhou, Yew-Soon Ong
发表日期
2022/11/9
期刊
IEEE Transactions on Cybernetics
出版商
IEEE
简介
In an era of pervasive digitalization, the growing volume and variety of data streams poses a new challenge to the efficient running of data-driven optimization algorithms. Targeting scalable multiobjective evolution under large-instance data, this article proposes the general idea of using subsampled small-data tasks as helpful minions (i.e., auxiliary source tasks) to quickly optimize for large datasets—via an evolutionary multitasking framework. Within this framework, a novel computational resource allocation strategy is designed to enable the effective utilization of the minions while guarding against harmful negative transfers. To this end, an intertask empirical correlation measure is defined and approximated via Bayes’ rule, which is then used to allocate resources online in proportion to the inferred degree of source–target correlation. In the experiments, the performance of the proposed algorithm is verified on: 1 …
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