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Clustering-driven evolutionary algorithms: an application of path relinking to the quadratic unconstrained binary optimization problem

机译:聚类驱动的进化算法:路径与二次无约束二进制优化问题的应用

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A long-standing challenge in the metaheuristic literature is to devise a way to select parent solutions in evolutionary population-based algorithms to yield better offspring, and thus provide improved solutions to populate successive generations. We identify a way to achieve this goal that simultaneously improves the efficiency of the evolutionary process. Our strategy derives from a proposal associated with the scatter search and path relinking evolutionary algorithms that prescribes clustering the solutions and focusing on the two classes of solution combinations where the parents alternatively belong to the same cluster or to different clusters. We demonstrate the efficacy of our approach for selecting parents within this scheme by applying it to the important domain of quadratic unconstrained binary optimization (QUBO), which provides a model for solving a wide range of binary optimization problems. Within this setting, we focus on the path relinking algorithm, which together with tabu search has provided one of the most effective methods for QUBO problems. Computational tests disclose that our solution combination strategy improves the best results in the literature for hard QUBO instances.
机译:在成群质文献中的长期挑战是设计一种方法来选择基于进化人口的算法中的父解决方案,以产生更好的后代,从而提供改进的填充后代的解决方案。我们确定了一种实现这一目标的方法,同时提高进化过程的效率。我们的策略源于与分散搜索和路径相关联的提案,该算法规定了群集解决方案并专注于父母替代地属于同一群集或不同群集的两类解决方案组合。我们展示了我们通过将二次无约束二进制优化(QUBO)的重要领域应用于这种方案中的父母在该方案中选择父母的效果,这为解决了求解了广泛的二进制优化问题的模型提供了一种模型。在此设置中,我们专注于路径重新链接算法,它与禁忌搜索一起为Qubo问题提供了最有效的方法之一。计算测试揭示了我们的解决方案组合策略提高了硬质QUBO实例的文献中的最佳结果。

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