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EXPLOITING TREE DECOMPOSITION FOR GUIDING NEIGHBORHOODS EXPLORATION FOR VNS

机译:探索树分解以指导VNS的近邻勘探

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Tree decomposition introduced by Robertson and Seymour aims to decompose a problem into clusters constituting an acyclic-graph. There are works exploiting tree decomposition for complete search methods. In this paper, we show how tree decomposition can be used to efficiently guide local search methods that use large neighborhoods like VNS. We propose DGVNS (Decomposition Guided VNS) which uses the graph of clusters in order to build neighborhood structures enabling better diversification and intensification. Second, we introduce tightness dependent tree decomposition which allows to take advantage of both the structure of the problem and the constraints tightness. Third, experiments performed on random instances (GRAPH) and real life instances (CELAR, SPOT5 and tagSNP) show the appropriateness and the efficiency of our approach. Moreover, we study and discuss the influence of the width of the tree decomposition on our approach and the relevance of removing clusters with very few proper variables from the tree decomposition.
机译:Robertson和Seymour引入的树分解旨在将问题分解为组成无环图的簇。有一些将树分解用于完整搜索方法的作品。在本文中,我们展示了如何使用树分解来有效地指导使用较大邻域(例如VNS)的本地搜索方法。我们提出了DGVNS(分解导向VNS),它使用聚类图来构建邻域结构,从而实现更好的多样化和集约化。其次,我们引入了紧密度相关的树分解,该分解允许同时利用问题的结构和约束紧密度。第三,对随机实例(GRAPH)和现实生活实例(CELAR,SPOT5和tagSNP)进行的实验表明了我们方法的适当性和有效性。此外,我们研究和讨论了树分解的宽度对我们的方法的影响以及从树分解中移除具有很少适当变量的聚类的相关性。

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