Clustering of Time-Varying Graphs Based on Temporal Label Smoothness
- URL: http://arxiv.org/abs/2305.06576v1
- Date: Thu, 11 May 2023 05:20:41 GMT
- Title: Clustering of Time-Varying Graphs Based on Temporal Label Smoothness
- Authors: Katsuki Fukumoto, Koki Yamada, Yuichi Tanaka, and Hoi-To Wai
- Abstract summary: We propose a node clustering method for time-varying graphs based on the assumption that the cluster labels are changed smoothly over time.
Experiments on synthetic and real-world time-varying graphs are performed to validate the effectiveness of the proposed approach.
- Score: 28.025212175496964
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We propose a node clustering method for time-varying graphs based on the
assumption that the cluster labels are changed smoothly over time. Clustering
is one of the fundamental tasks in many science and engineering fields
including signal processing, machine learning, and data mining. Although most
existing studies focus on the clustering of nodes in static graphs, we often
encounter time-varying graphs for time-series data, e.g., social networks,
brain functional connectivity, and point clouds. In this paper, we formulate a
node clustering of time-varying graphs as an optimization problem based on
spectral clustering, with a smoothness constraint of the node labels. We solve
the problem with a primal-dual splitting algorithm. Experiments on synthetic
and real-world time-varying graphs are performed to validate the effectiveness
of the proposed approach.
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