Center-based l1–clustering method

K. Sabo
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引用次数: 15

Abstract

Abstract In this paper, we consider the l1-clustering problem for a finite data-point set which should be partitioned into k disjoint nonempty subsets. In that case, the objective function does not have to be either convex or differentiable, and generally it may have many local or global minima. Therefore, it becomes a complex global optimization problem. A method of searching for a locally optimal solution is proposed in the paper, the convergence of the corresponding iterative process is proved and the corresponding algorithm is given. The method is illustrated by and compared with some other clustering methods, especially with the l2-clustering method, which is also known in the literature as a smooth k-means method, on a few typical situations, such as the presence of outliers among the data and the clustering of incomplete data. Numerical experiments show in this case that the proposed l1-clustering algorithm is faster and gives significantly better results than the l2-clustering algorithm.
基于中心的l1聚类方法
摘要考虑一类有限数据点集的11 -聚类问题,该数据点集需要划分为k个不相交的非空子集。在这种情况下,目标函数不必是凸的或可微的,通常它可能有许多局部或全局最小值。因此,它成为一个复杂的全局优化问题。提出了一种寻找局部最优解的方法,证明了相应迭代过程的收敛性,并给出了相应的算法。通过与其他一些聚类方法,特别是与文献中称为光滑k-means的12 -聚类方法,在数据中存在离群点和不完整数据聚类等几种典型情况下进行了说明和比较。在这种情况下,数值实验表明,所提出的1- 1聚类算法比2- 1聚类算法速度更快,结果明显好于2- 1聚类算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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