并行jard和相关的图聚类技术

Alexandre Fender, N. Emad, S. Petiton, Joe Eaton, M. Naumov
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引用次数: 7

摘要

在本文中,我们提出了Jaccard和相关度量的推广,这些度量通常被用作两个集合之间的相似系数。我们在图上定义了Jaccard, Dice-Sorensen和Tversky边权值,并将它们推广到顶点权值。我们开发了一种计算Jaccard边和PageRank顶点权重的高效并行算法。我们强调,在大型真实数据集上,权重计算在GPU上比CPU上可以获得10倍以上的加速。此外,我们还表明,找到修改权重的最小平衡切割可能与最小化集群边界上节点的相交和并的比率和有关。最后,我们表明,对于多级和谱图划分和聚类方案,新的权值可以分别将图的聚类质量提高约15%和80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallel jaccard and related graph clustering techniques
In this paper we propose to generalize Jaccard and related measures, often used as similarity coefficients between two sets. We define Jaccard, Dice-Sorensen and Tversky edge weights on a graph and generalize them to account for vertex weights. We develop an efficient parallel algorithm for computing Jaccard edge and PageRank vertex weights. We highlight that the weights computation can obtain more than 10X speedup on the GPU versus CPU on large realistic data sets. Also, we show that finding a minimum balanced cut for modified weights can be related to minimizing the sum of ratios of the intersection and union of nodes on the boundary of clusters. Finally, we show that the novel weights can improve the quality of the graph clustering by about 15% and 80% for multi-level and spectral graph partitioning and clustering schemes, respectively.
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