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Performance of Network Crossover on NK Landscapes and Spin Glasses

机译:网络交叉对NK景观和自旋眼镜的性能

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This paper describes a network crossover operator based on knowledge gathered from either prior problem-specific knowledge or linkage learning methods such as estimation of distribution algorithms (EDAs). This operator can be used in a genetic algorithm (GA) to incorporate linkage in recombination. The performance of GA with network crossover is compared to that of GA with uniform crossover and the hierarchical Bayesian optimization algorithm (hBOA) on 2D Ising spin glasses, NK landscapes, and SK spin glasses. The results are analyzed and discussed.
机译:本文介绍了一种基于从先于特定问题的知识或链接学习方法(例如,分配算法(EDA)的估计)中收集的知识的网络跨界运营商。可以在遗传算法(GA)中使用此运算符,以将链接合并到重组中。在2D Ising自旋眼镜,NK景观和SK自旋眼镜上,将具有网络交叉的GA的性能与具有均匀交叉的GA和分层贝叶斯优化算法(hBOA)进行比较。结果进行了分析和讨论。

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