Parallel Counting of Triangles in Large Graphs: Pruning and Hierarchical Clustering Algorithms

2018 IEEE High Performance extreme Computing Conference (HPEC)(2018)

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摘要
As part of the 2018 MIT-Amazon Graph Challenge on subgraph isomorphism, we propose a novel joint hierarchical clustering and parallel counting technique called the PHC algorithm that can compute the exact number of triangles in large graphs. The PHC algorithm consists of first pruning followed by hierarchical clustering based on geodesic distance and then triangle counting in parallel. This allows scalable software framework such as MapReduce/Hadoop to count triangles inside each cluster as well as those straddling between clusters in parallel. We characterize the performance of the PHC algorithm mathematically, and its performance evaluation using representative graphs including random graphs demonstrates its computational efficiency over other existing techniques.
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关键词
parallel counting,hierarchical clustering algorithms,2018 MIT-Amazon Graph Challenge,subgraph isomorphism,novel joint hierarchical clustering,PHC algorithm,exact number,scalable software framework,representative graphs,random graphs
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