Detecting network overlapping community has become a very hot research topic in the literature. However, overlapping community detection for count-value networks that naturally arise and are pervasive in our modern life, has not yet been thoroughly studied. We propose a generative model for count-value networks with overlapping community structure and use the Indian buffet process to model the community assignment matrix Z; thus, provide a flexible nonparametric Bayesian scheme that can allow the number of communities K to increase as more and more data are encountered instead of to be fixed in advance. Both collapsed and uncollapsed Gibbs sampler for the generative model have been derived. We conduct extensive experiments on simulated network data and real network data, and estimate the inference quality on single variable parameters. We find that the proposed model and inference procedure can bring us the desired experimental results.
CITATION STYLE
Yu, Q. C., Yu, Z. W., Wang, Z., Wang, X. F., & Wang, Y. Z. (2019). Overlapping community detection for count-value networks. Human-Centric Computing and Information Sciences, 9(1). https://doi.org/10.1186/s13673-019-0202-9
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