作者
Ryan A Rossi, Brian Gallagher, Jennifer Neville, Keith Henderson
发表日期
2013/2/4
研讨会论文
Proceedings of the sixth ACM international conference on Web search and data mining
页码范围
667-676
出版商
ACM
简介
Given a large time-evolving graph, how can we model and characterize the temporal behaviors of individual nodes (and network states)? How can we model the behavioral transition patterns of nodes? We propose a temporal behavior model that captures the "roles" of nodes in the graph and how they evolve over time. The proposed dynamic behavioral mixed-membership model (DBMM) is scalable, fully automatic (no user-defined parameters), non-parametric/data-driven (no specific functional form or parameterization), interpretable (identifies explainable patterns), and flexible (applicable to dynamic and streaming networks). Moreover, the interpretable behavioral roles are generalizable and computationally efficient. We applied our model for (a) identifying patterns and trends of nodes and network states based on the temporal behavior, (b) predicting future structural changes, and (c) detecting unusual temporal …
引用总数
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学术搜索中的文章
RA Rossi, B Gallagher, J Neville, K Henderson - Proceedings of the sixth ACM international conference …, 2013