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Change-point detection in dynamic networks via graphon estimation

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arxiv 1908.01823 v1 pith:WBTHEQCV submitted 2019-08-05 stat.ME math.STstat.TH

Change-point detection in dynamic networks via graphon estimation

classification stat.ME math.STstat.TH
keywords dynamicchange-pointdetectionnetworksalgorithmapproachestimationgraphon
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a general approach for change-point detection in dynamic networks. The proposed method is model-free and covers a wide range of dynamic networks. The key idea behind our approach is to effectively utilize the network structure in designing change-point detection algorithms. This is done via an initial step of graphon estimation, where we propose a modified neighborhood smoothing~(MNBS) algorithm for estimating the link probability matrices of a dynamic network. Based on the initial graphon estimation, we then develop a screening and thresholding algorithm for multiple change-point detection in dynamic networks. The convergence rate and consistency for the change-point detection procedure are derived as well as those for MNBS. When the number of nodes is large~(e.g., exceeds the number of temporal points), our approach yields a faster convergence rate in detecting change-points comparing with an algorithm that simply employs averaged information of the dynamic network across time. Numerical experiments demonstrate robust performance of the proposed algorithm for change-point detection under various types of dynamic networks, and superior performance over existing methods is observed. A real data example is provided to illustrate the effectiveness and practical impact of the procedure.

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