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Self-organizing Neural Network for Adaptive Operator Selection in Evolutionary Search

机译:自组织神经网络用于进化搜索中的自适应算子选择

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Evolutionary Algorithm is a well-known meta-heuristics para-digm capable of providing high-quality solutions to computationally hard problems. As with the other meta-heuristics, its performance is often attributed to appropriate design choices such as the choice of crossover operators and some other parameters. In this chapter, we propose a continuous state Markov Decision Process model to select crossover operators based on the states during evolutionary search. We propose to find the operator selection policy efficiently using a self-organizing neural network, which is trained offline using randomly selected training samples. The trained neural network is then verified on test instances not used for generating the training samples. We evaluate the efficacy and robustness of our proposed approach with benchmark instances of Quadratic Assignment Problem.
机译:进化算法是一种众所周知的元启发式范例,能够为计算难题提供高质量的解决方案。与其他元启发式方法一样,其性能通常归因于适当的设计选择,例如选择交叉算子和其他一些参数。在本章中,我们提出了一种连续状态马尔可夫决策过程模型,以基于进化搜索过程中的状态选择交叉算子。我们建议使用自组织神经网络有效地找到操作员选择策略,该网络使用随机选择的训练样本进行离线训练。然后,在未用于生成训练样本的测试实例上验证训练后的神经网络。我们用二次分配问题的基准实例评估了我们提出的方法的有效性和鲁棒性。

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