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A branch-and-cut SDP-based algorithm for minimum sum-of-squares clustering

机译:一种基于分切SDP的最小平方和聚类算法

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Minimum sum-of-squares clustering (MSSC) consists in partitioning a given set of n points into k clusters in order to minimize the sum of squared distances from the points to the centroid of their cluster. Recently, Peng & Xia (2005) established the equivalence between 0-1 semidefinite programming (SDP) and MSSC. In this paper, we propose a branch-and-cut algorithm for the underlying 0-1 SDP model. The algorithm obtains exact solutions for fairly large data sets with computing times comparable with those of the best exact method found in the literature.
机译:最小平方和聚类(MSSC)包括将一组给定的n个点划分为k个聚类,以最小化从点到其聚类的质心的平方距离之和。最近,Peng&Xia(2005)建立了0-1半定规划(SDP)与MSSC之间的等价关系。在本文中,我们为基础的0-1 SDP模型提出了分支剪切算法。该算法获得了相当大的数据集的精确解,其计算时间可与文献中发现的最佳精确方法相媲美。

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