Document detail
ID

oai:arXiv.org:2404.08242

Topic
Computer Science - Neural and Evol... Computer Science - Artificial Inte...
Author
Lian, Hongqiao Ma, Zeyuan Guo, Hongshu Huang, Ting Gong, Yue-Jiao
Category

Computer Science

Year

2024

listing date

4/17/2024

Keywords
optimization
Metrics

Abstract

Solving multimodal optimization problems (MMOP) requires finding all optimal solutions, which is challenging in limited function evaluations.

Although existing works strike the balance of exploration and exploitation through hand-crafted adaptive strategies, they require certain expert knowledge, hence inflexible to deal with MMOP with different properties.

In this paper, we propose RLEMMO, a Meta-Black-Box Optimization framework, which maintains a population of solutions and incorporates a reinforcement learning agent for flexibly adjusting individual-level searching strategies to match the up-to-date optimization status, hence boosting the search performance on MMOP.

Concretely, we encode landscape properties and evolution path information into each individual and then leverage attention networks to advance population information sharing.

With a novel reward mechanism that encourages both quality and diversity, RLEMMO can be effectively trained using a policy gradient algorithm.

The experimental results on the CEC2013 MMOP benchmark underscore the competitive optimization performance of RLEMMO against several strong baselines.

;Comment: Accepted as full paper at GECCO 2024

Lian, Hongqiao,Ma, Zeyuan,Guo, Hongshu,Huang, Ting,Gong, Yue-Jiao, 2024, RLEMMO: Evolutionary Multimodal Optimization Assisted By Deep Reinforcement Learning

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