TeraHAC:万亿边图的层次聚集聚类

Laxman Dhulipala, Jakub Łącki, Jason Lee, Vahab Mirrokni
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引用次数: 0

摘要

介绍了一种(1+ε)近似层次聚类(HAC)算法TeraHAC,该算法可扩展到万亿边图。我们的算法是基于一种新的计算(1+ε)-近似HAC的方法,它是最近邻链算法和(1+ε)-近似HAC概念的新颖结合。我们的方法允许我们在多台机器之间划分图,并在需要与其他分区进行任何通信之前,在计算每个分区内的集群方面取得重大进展。我们在许多真实世界和多达8万亿个边的合成图上评估了TeraHAC。我们表明,与以前已知的计算HAC的方法相比,TeraHAC所需的轮数减少了100倍以上。它比SCC(最先进的分布式分层聚类算法)快8.3倍,同时质量提高1.16倍。事实上,TeraHAC基本上保留了著名的HAC算法的质量,同时显著改善了运行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TeraHAC: Hierarchical Agglomerative Clustering of Trillion-Edge Graphs
We introduce TeraHAC, a (1+ε)-approximate hierarchical agglomerative clustering (HAC) algorithm which scales to trillion-edge graphs. Our algorithm is based on a new approach to computing (1+ε)-approximate HAC, which is a novel combination of the nearest-neighbor chain algorithm and the notion of (1+ε)-approximate HAC. Our approach allows us to partition the graph among multiple machines and make significant progress in computing the clustering within each partition before any communication with other partitions is needed. We evaluate TeraHAC on a number of real-world and synthetic graphs of up to 8 trillion edges. We show that TeraHAC requires over 100x fewer rounds compared to previously known approaches for computing HAC. It is up to 8.3x faster than SCC, the state-of-the-art distributed algorithm for hierarchical clustering, while achieving 1.16x higher quality. In fact, TeraHAC essentially retains the quality of the celebrated HAC algorithm while significantly improving the running time.
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