RACK: RApid clustering using K-means algorithm

Vikas K. Garg, M. Murty
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Abstract

The k-means algorithm is an extremely popular technique for clustering data. One of the major limitations of the k-means is that the time to cluster a given dataset D is linear in the number of clusters, k. In this paper, we employ height balanced trees to address this issue. Specifically, we make two major contributions, (a) we propose an algorithm, RACK (acronym for RApid Clustering using k-means), which takes time favorably comparable with the fastest known existing techniques, and (b) we prove an expected bound on the quality of clustering achieved using RACK. Our experimental results on large datasets strongly suggest that RACK is competitive with the k-means algorithm in terms of quality of clustering, while taking significantly less time.
RACK:使用K-means算法的快速聚类
k-means算法是一种非常流行的聚类数据技术。k-means的主要限制之一是对给定数据集D进行聚类的时间在聚类数量k上是线性的。在本文中,我们使用高度平衡树来解决这个问题。具体来说,我们做出了两个主要贡献,(a)我们提出了一种算法,RACK(使用k-means的快速聚类的缩写),它所花费的时间与已知的最快的现有技术相比是有利的,(b)我们证明了使用RACK实现的聚类质量的预期界限。我们在大型数据集上的实验结果强烈表明,RACK在聚类质量方面与k-means算法具有竞争力,同时花费的时间明显更少。
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