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Bandit-based cooperative coevolution for tackling contribution imbalance in large-scale optimization problems
Affiliation:1. Machine Intelligence Laboratory, College of Computer Science, Sichuan University, Chengdu 610065, China;2. CERCIA, School of Computer Science, University of Birmingham, B15 2TT Birmingham, UK;3. Shenzhen Key Laboratory of Computational Intelligence, University Key Laboratory of Evolving Intelligent Systems of Guangdong Province, Department of Computer Science and Engineering, Southern University of Science and Technology, Shenzhen 518055, China;4. Chengdu Sobey Digital Technology Co., Ltd, Chengdu 610041, China;5. Shenzhen Cyberspace Laboratory, Shenzhen 518055, China
Abstract:This paper addresses the issue of computational resource allocation within the context of cooperative coevolution. Cooperative coevolution typically works by breaking a problem down into smaller subproblems (or components) and coevolving them in a round-robin fashion, resulting in a uniform resource allocation among its components. Despite its success on a wide range of problems, cooperative coevolution struggles to perform efficiently when its components do not contribute equally to the overall objective value. This is of crucial importance on large-scale optimization problems where such difference are further magnified. To resolve this imbalance problem, we extend the standard cooperative coevolution to a new generic framework capable of learning the contribution of each component using multi-armed bandit techniques. The new framework allocates the computational resources to each component proportional to their contributions towards improving the overall objective value. This approach results in a more economical use of the limited computational resources. We study different aspects of the proposed framework in the light of extensive experiments. Our empirical results confirm that even a simple bandit-based credit assignment scheme can significantly improve the performance of cooperative coevolution on large-scale continuous problems, leading to competitive performance as compared to the state-of-the-art algorithms.
Keywords:Imbalanced large-scale optimization  Resource allocation  Multi-armed bandits
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