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A scalable exact algorithm for the vertex p-center problem

机译:顶点p中心问题的可扩展精确算法

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The vertexp-center problem consists in selectingpcenters among a finite set of candidates and assigning a set of clients to them, with the aim of minimizing the maximum dissimilarity between a client and its associated center. State-of-the-art algorithms for the problem are based on the solution of a series of covering subproblems, and are particularly efficient when additional reduction rules are used to limit the size of the subproblems. In fact, these algorithms do not scale well when the cardinality of the dissimilarity matrix grows above a few million entries, as the time and space required to compute and store the matrix start dominating those required for solving the subproblems. We introduce a scalable relaxation-based iterative algorithm that does not rely on the computation of the entire matrix, but rather relies on the computation of a typically much smaller sub-matrix that is only enlarged if deemed necessary. This method can solve to proven optimalityp-center problems derived from the TSP library and containing up to one million clients for small but realistic values ofp.
机译:vertexp-center问题包括在有限的一组候选者中选择pcenters并为其分配一组客户,以最大程度地减少客户及其关联中心之间的最大差异。该问题的最新算法基于一系列覆盖子问题的解决方案,当使用其他归约规则来限制子问题的大小时,该算法特别有效。实际上,当相异性矩阵的基数增长到几百万个条目以上时,这些算法无法很好地扩展,因为计算和存储矩阵所需的时间和空间开始主导解决子问题所需的时间和空间。我们引入了一种基于可伸缩性的基于松弛的迭代算法,该算法不依赖于整个矩阵的计算,而是依赖于通常小得多的子矩阵的计算,该子矩阵仅在认为必要时才进行扩展。这种方法可以解决源自TSP库的经过验证的最优性p中心问题,该问题可包含多达一百万个客户,但它们的p值很小但很实际。

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