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An aggregation heuristic for large scale p-median problem

机译:大规模p中值问题的聚合启发式

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The p-median problem (PMP) consists of locating p facilities (medians) in order to minimize the sum of distances from each client to the nearest facility. The interest in the large-scale PMP arises from applications in cluster analysis, where a set of patterns has to be partitioned into subsets (clusters) on the base of similarity. In this paper we introduce a new heuristic for large-scale PMP instances, based on Lagrangean relaxation. It consists of three main components: subgradient column generation, combining subgradient optimization with column generation; a "core" heuristic, which computes an upper bound by solving a reduced problem defined by a subset of the original variables chosen on a base of Lagrangean reduced costs; and an aggregation procedure that defines reduced size instances by aggregating together clients with the facilities. Computational results show that the proposed heuristic is able to compute good quality lower and upper bounds for instances up to 90,000 clients and potential facilities.
机译:p中位数问题(PMP)包括定位p个设施(中位数),以最大程度地减少每个客户端到最近的设施的距离之和。大型PMP的兴趣来自于聚类分析中的应用,在聚类分析中,必须基于相似性将一组模式划分为子集(集群)。在本文中,我们基于拉格朗日弛豫引入了一种针对大型PMP实例的新启发式方法。它由三个主要组件组成:次梯度列生成,将次梯度优化与列生成相结合;一种“核心”启发式算法,它通过解决由基于拉格朗日降低的成本选择的原始变量的子集定义的简化问题来计算上限;以及通过将客户端与设施聚合在一起来定义大小减小的实例的聚合过程。计算结果表明,所提出的启发式方法能够为多达90,000个客户端和潜在设施计算出高质量的上下限。

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