Community detection in hypernetwork via Density-Ordered Tree partition

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摘要

Hypernetwork, as a useful representation of natural and social systems has received increasing interests from researchers. Community is crucial to understand the structural and functional properties of the hypernetworks. Here, we propose a new method to uncover the communities of hypernetworks. We construct a Density-Ordered Tree (DOT) to represent original data by combining density and distance, and the community detection in hypernetwork is converted to a DOT partition problem. Then, an anomaly detection strategy using box-plot rule is applied to partition DOT and judge whether there is a significant community structure in the hypernetwork. Moreover, visual inspection as a complementary approach of box-plot rule can effectively improve the effectiveness of community detection. Finally, the method is compared with existing methods in both synthetic and real-world networks.

论文关键词:Community,Density-Ordered Tree,Anomaly detection,Visual inspection

论文评审过程:Received 27 October 2015, Revised 14 December 2015, Accepted 20 December 2015, Available online 8 January 2016, Version of Record 8 January 2016.

论文官网地址:https://doi.org/10.1016/j.amc.2015.12.039