Learning to Transfer for Evolutionary Multitasking
Sheng-Hao Wu, Yuxiao Huang, Xingyu Wu, Liang Feng, Zhi-Hui Zhan, Kay, Chen Tan

TL;DR
This paper introduces a Learning to Transfer framework that automatically learns effective knowledge transfer policies in evolutionary multitasking, significantly improving adaptability and performance across diverse multitask optimization problems.
Contribution
It proposes a novel L2T framework that models transfer decision-making as a learning process using reinforcement learning, enhancing implicit EMT's ability to handle various MTOPs.
Findings
Improved transfer efficiency and convergence in diverse MTOPs
Enhanced adaptability of EMT algorithms to unseen tasks
Validated on synthetic and real-world multitask problems
Abstract
Evolutionary multitasking (EMT) is an emerging approach for solving multitask optimization problems (MTOPs) and has garnered considerable research interest. The implicit EMT is a significant research branch that utilizes evolution operators to enable knowledge transfer (KT) between tasks. However, current approaches in implicit EMT face challenges in adaptability, due to the use of a limited number of evolution operators and insufficient utilization of evolutionary states for performing KT. This results in suboptimal exploitation of implicit KT's potential to tackle a variety of MTOPs. To overcome these limitations, we propose a novel Learning to Transfer (L2T) framework to automatically discover efficient KT policies for the MTOPs at hand. Our framework conceptualizes the KT process as a learning agent's sequence of strategic decisions within the EMT process. We propose an action…
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Taxonomy
TopicsMetaheuristic Optimization Algorithms Research · Evolutionary Algorithms and Applications · Reinforcement Learning in Robotics
