• 中文核心期刊要目总览
  • 中国科技核心期刊
  • 中国科学引文数据库(CSCD)
  • 中国科技论文与引文数据库(CSTPCD)
  • 中国学术期刊文摘数据库(CSAD)
  • 中国学术期刊(网络版)(CNKI)
  • 中文科技期刊数据库
  • 万方数据知识服务平台
  • 中国超星期刊域出版平台
  • 国家科技学术期刊开放平台
  • 荷兰文摘与引文数据库(SCOPUS)
  • 日本科学技术振兴机构数据库(JST)
Qian-Long Dang, Wei Xu, Yang-Fei Yuan. A Dynamic Resource Allocation Strategy with Reinforcement Learning for Multimodal Multi-objective Optimization[J]. Machine Intelligence Research, 2022, 19(2): 138-152. DOI: 10.1007/s11633-022-1314-7
Citation: Qian-Long Dang, Wei Xu, Yang-Fei Yuan. A Dynamic Resource Allocation Strategy with Reinforcement Learning for Multimodal Multi-objective Optimization[J]. Machine Intelligence Research, 2022, 19(2): 138-152. DOI: 10.1007/s11633-022-1314-7

A Dynamic Resource Allocation Strategy with Reinforcement Learning for Multimodal Multi-objective Optimization

  • Abstract: Many isolation approaches, such as zoning search, have been proposed to preserve the diversity in the decision space of multimodal multi-objective optimization (MMO). However, these approaches allocate the same computing resources for subspaces with different difficulties and evolution states. In order to solve this issue, this paper proposes a dynamic resource allocation strategy (DRAS) with reinforcement learning for multimodal multi-objective optimization problems (MMOPs). In DRAS, relative contribution and improvement are utilized to define the aptitude of subspaces, which can capture the potentials of subspaces accurately. Moreover, the reinforcement learning method is used to dynamically allocate computing resources for each subspace. In addition, the proposed DRAS is applied to zoning searches. Experimental results demonstrate that DRAS can effectively assist zoning search in finding more and better distributed equivalent Pareto optimal solutions in the decision space.

     

/

返回文章
返回