Scalable Inference of Overlapping Communities.

NIPS(2012)

引用 136|浏览109
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摘要
We develop a scalable algorithm for posterior inference of overlapping communities in large networks. Our algorithm is based on stochastic variational inference in the mixed-membership stochastic blockmodel. It naturally interleaves subsampling the network with estimating its community structure. We apply our algorithm on ten large, real-world networks with up to 60,000 nodes. It converges several orders of magnitude faster than the state-of-the-art algorithm for MMSB, finds hundreds of communities in large real-world networks, and detects the true communities in 280 benchmark networks with equal or better accuracy compared to other scalable algorithms.
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关键词
Inference,Benchmark (computing),Scalability,Community structure,Theoretical computer science,Data mining,Orders of magnitude (bit rate),Mathematics,Large networks,Scalable algorithms
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