通过聚类选择竞赛加速一次聚类

Nicolas Labroche, Marcin Detyniecki, Thomas Bärecke
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引用次数: 1

摘要

本文介绍了单次聚类算法在聚类选择过程中的一种竞速机制。我们关注的是数据不是数值向量的情况,以及不可能为每个集群计算平均值的情况。在这种情况下,每个点到现有集群的距离可以用二次复杂度详尽地计算出来,这在现在的大多数用例中是难以处理的。在本文中,我们首先介绍了一种基于Hoeffding和Bernstein边界估计每个新数据点到现有簇的距离的随机方法,该方法通过同时选择要采样的数据量和通过消除非竞争簇来减少计算次数。其次,本文表明可以通过降低Hoeffding和Bernstein边界的理论值来提高我们方法的效率。我们的算法在真实数据集上进行了测试,提供了一次聚类算法的显著加速,同时比与每个聚类进行固定数量比较的一次聚类算法产生更少的错误(或任何取决于参数的错误)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating One-Pass Clustering by Cluster Selection Racing
This paper introduces a racing mechanism in the cluster selection process for one-pass clustering algorithms. We focus on cases where data are not numerical vectors and where it is not necessarily possible to compute a mean for each cluster. In this case, the distance of each point to existing clusters can be computed exhaustively with a quadratic complexity which is not tractable in most of nowadays use cases. In this paper we first introduce a stochastic approach for estimating the distance of each new data point to existing clusters based on Hoeffding and Bernstein bounds, that reduces the number of computations by simultaneously selecting the quantity of data to be sampled and by eliminating the non-competitive clusters. Second, this paper shows that it is possible to improve the efficiency of our approach by reducing the theoretical values of the Hoeffding and Bernstein bounds. Our algorithms, tested on real data sets, provide significant acceleration of the one-pass clustering algorithms, while making less error (or any depending on parameters) than one-pass clustering algorithm with fixed number of comparisons with each cluster.
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