Multi-scale Community Detection in Temporal Networks Using Spectral Graph Wavelets
Zhana Kuncheva, Giovanni Montana

TL;DR
This paper introduces a novel spectral graph wavelet-based method for detecting multi-scale communities in temporal networks, leveraging a multilayer framework and perturbation theory to improve community detection accuracy over time.
Contribution
It extends spectral graph wavelets to temporal networks using a multilayer approach and develops a new wavelet filter function for better multi-scale community detection.
Findings
TMSCD effectively detects communities at multiple scales.
The method automatically identifies relevant scales for community detection.
TMSCD outperforms existing methods on benchmark datasets.
Abstract
Spectral graph wavelets introduce a notion of scale in networks, and are thus used to obtain a local view of the network from each node. By carefully constructing a wavelet filter function for these wavelets, a multi-scale community detection method for monoplex networks has already been developed. This construction takes advantage of the partitioning properties of the network Laplacian. In this paper we elaborate on a novel method which uses spectral graph wavelets to detect multi-scale communities in temporal networks. To do this we extend the definition of spectral graph wavelets to temporal networks by adopting a multilayer framework. We use arguments from Perturbation Theory to investigate the spectral properties of the supra-Laplacian matrix for clustering purposes in temporal networks. Using these properties, we construct a new wavelet filter function, which attenuates the…
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