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Adaptive Structural Hyper-Parameter Configuration by Q-Learning

机译:通过Q学习进行自适应结构超参数配置

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Tuning hyper-parameters for evolutionary algorithms is an important issue in computational intelligence. Performance of an evolutionary algorithm depends not only on its operation strategy design, but also on its hyper-parameters. Hyper-parameters can be categorized in two dimensions as structuralumerical and time-invariant/time-variant. Particularly, structural hyper-parameters in existing studies are usually tuned in advance for time-invariant parameters, or with hand-crafted scheduling for time-invariant parameters. In this paper, we make the first attempt to model the tuning of structural hyper-parameters as a reinforcement learning problem, and present to tune the structural hyper-parameter which controls computational resource allocation in the CEC 2018 winner algorithm by Q-learning. Experimental results show favorably against the winner algorithm on the CEC 2018 test functions.
机译:调整进化算法的超参数是计算智能中的重要问题。进化算法的性能不仅取决于其操作策略设计,还取决于其超参数。超参数可以在两个维度上分类为结构/数值和时不变/时变。特别是,现有研究中的结构超参数通常会针对时不变参数进行预先调整,或者针对时不变参数进行手工调度。在本文中,我们首次尝试将结构超参数的调整建模为强化学习问题,并提出通过Q学习调整CEC 2018优胜者算法中控制计算资源分配的结构超参数。实验结果显示,在CEC 2018测试功能上,优胜者算法表现出色。

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