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Evolutionary Learning Based Iterated Local Search for Google Machine Reassignment Problems

机译:基于进化学习的迭代本地搜索解决Google机器的重新分配问题

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Iterated Local Search (ILS) is a simple yet powerful optimisation method that iteratively invokes a local search procedure with renewed starting points by perturbation. Due to the complexity of search landscape, different ILS strategies may better suit different problem instances or different search stages. To address this issue, this work proposes a new ILS framework which selects the most suited components of ILS based on evolutionary meta-learning. It has three additional components other than ILS: meta-feature extraction, meta-learning and classification. The meta-feature and meta-learning steps are to generate a multi-class classifier by training on a set of existing problem instances. The generated classifier then selects the most suitable ILS setting when performing on new instances. The classifier is generated by Genetic Programming. The effectiveness of the proposed ILS framework is demonstrated on the Google Machine Reassignment Problem. Experimental results show that the proposed framework is highly competitive compared to 10 state-of-the-art methods reported in the literature.
机译:迭代本地搜索(ILS)是一种简单而强大的优化方法,它通过扰动来迭代地调用具有新起点的本地搜索过程。由于搜索环境的复杂性,不同的ILS策略可能更好地适合不同的问题实例或不同的搜索阶段。为了解决这个问题,这项工作提出了一个新的ILS框架,该框架基于进化元学习选择最适合ILS的组件。除ILS之外,它还具有三个附加组件:元功能提取,元学习和分类。元功能和元学习步骤是通过对一组现有问题实例进行训练来生成多分类器。然后,在对新实例执行操作时,生成的分类器将选择最合适的ILS设置。分类器是通过遗传编程生成的。 Google机器重新分配问题证明了所建议的ILS框架的有效性。实验结果表明,与文献中报道的10种最新方法相比,该框架具有很高的竞争力。

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