4.7 Article

Evolutionary Many-Task Optimization Based on Multisource Knowledge Transfer

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TEVC.2021.3101697

关键词

Task analysis; Knowledge transfer; Optimization; Statistics; Sociology; Resource management; Heuristic algorithms; Evolutionary many-task optimization (EMaTO); local distribution estimation; maximum mean discrepancy (MMD); multisource knowledge transfer

资金

  1. National Natural Science Foundation of China [61871272, 62001300]
  2. National Natural Science Foundation of Guangdong, China [2020A1515010479, 2021A1515011911, 2021A1515011679]
  3. Guangdong Provincial Key Laboratory [2020B121201001]
  4. Shenzhen Fundamental Research Program [20200811181752003, JCYJ20190808173617147]
  5. BGI-Research Shenzhen Open Funds [BGIRSZ20200002]

向作者/读者索取更多资源

This article proposes an evolutionary many-task optimization algorithm, EMaTO-MKT, based on a multisource knowledge transfer mechanism. The algorithm adaptively determines the probability of using knowledge transfer and balances the self-evolution and knowledge transfer among tasks. It selects multiple highly similar tasks as learning sources and applies a knowledge transfer strategy based on local distribution estimation. Experimental results show the competitiveness of EMaTO-MKT in solving many-task optimization problems.
Multitask optimization aims to solve two or more optimization tasks simultaneously by leveraging intertask knowledge transfer. However, as the number of tasks increases to the extent of many-task optimization, the knowledge transfer between tasks encounters more uncertainty and challenges, thereby resulting in degradation of optimization performance. To give full play to the many-task optimization framework and minimize the potential negative transfer, this article proposes an evolutionary many-task optimization algorithm based on a multisource knowledge transfer mechanism, namely, EMaTO-MKT. Particularly, in each iteration, EMaTO-MKT determines the probability of using knowledge transfer adaptively according to the evolution experience, and balances the self-evolution within each task and the knowledge transfer among tasks. To perform knowledge transfer, EMaTO-MKT selects multiple highly similar tasks in terms of maximum mean discrepancy as the learning sources for each task. Afterward, a knowledge transfer strategy based on local distribution estimation is applied to enable the learning from multiple sources. Compared with the other state-of-the-art evolutionary many-task algorithms on benchmark test suites, EMaTO-MKT shows competitiveness in solving many-task optimization problems.

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