Scalable Hierarchical Clustering with Tree Grafting

Nicholas Monath, Ari Kobren, A. Krishnamurthy, Michael R. Glass, A. McCallum
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引用次数: 34

Abstract

We introduce Grinch, a new algorithm for large-scale, non-greedy hierarchical clustering with general linkage functions that compute arbitrary similarity between two point sets. The key components of Grinch are its rotate and graft subroutines that efficiently reconfigure the hierarchy as new points arrive, supporting discovery of clusters with complex structure. Grinch is motivated by a new notion of separability for clustering with linkage functions: we prove that when the linkage function is consistent with a ground-truth clustering, Grinch is guaranteed to produce a cluster tree containing the ground-truth, independent of data arrival order. Our empirical results on benchmark and author coreference datasets (with standard and learned linkage functions) show that Grinch is more accurate than other scalable methods, and orders of magnitude faster than hierarchical agglomerative clustering.
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基于树嫁接的可伸缩分层聚类
本文介绍了一种新的Grinch算法,该算法用于计算两个点集之间的任意相似度,具有一般的链接函数。Grinch的关键组成部分是它的旋转和嫁接子程序,这些子程序可以在新点到达时有效地重新配置层次结构,支持发现具有复杂结构的簇。Grinch的动机是一个新的可分性概念,用于与链接函数聚类:我们证明了当链接函数与一个基础真聚类一致时,Grinch保证生成一个包含基础真聚类树,与数据到达顺序无关。我们在基准和作者共同参考数据集(具有标准和学习链接函数)上的实证结果表明,Grinch比其他可扩展方法更准确,并且比分层凝聚聚类快几个数量级。
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