Community Detection in Degree-Corrected Block Models

July 24, 2016 Β· Declared Dead Β· πŸ› Annals of Statistics

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Authors Chao Gao, Zongming Ma, Anderson Y. Zhang, Harrison H. Zhou arXiv ID 1607.06993 Category math.ST Cross-listed cs.SI, stat.ML Citations 150 Venue Annals of Statistics Last Checked 1 month ago
Abstract
Community detection is a central problem of network data analysis. Given a network, the goal of community detection is to partition the network nodes into a small number of clusters, which could often help reveal interesting structures. The present paper studies community detection in Degree-Corrected Block Models (DCBMs). We first derive asymptotic minimax risks of the problem for a misclassification proportion loss under appropriate conditions. The minimax risks are shown to depend on degree-correction parameters, community sizes, and average within and between community connectivities in an intuitive and interpretable way. In addition, we propose a polynomial time algorithm to adaptively perform consistent and even asymptotically optimal community detection in DCBMs.
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