Clustering on Multi-Layer Graphs via Subspace Analysis on Grassmann Manifolds
Xiaowen Dong, Pascal Frossard, Pierre Vandergheynst, Nikolai Nefedov

TL;DR
This paper introduces a novel clustering method for multi-layer graphs that leverages subspace analysis on Grassmann manifolds to effectively combine multiple relationship modalities, improving clustering performance.
Contribution
The paper proposes a new framework for multi-layer graph clustering using Grassmann manifold subspace analysis, which preserves key information across diverse modalities.
Findings
Superior clustering performance on synthetic datasets
Competitive results on real-world datasets
Framework applicable to various graph analysis problems
Abstract
Relationships between entities in datasets are often of multiple nature, like geographical distance, social relationships, or common interests among people in a social network, for example. This information can naturally be modeled by a set of weighted and undirected graphs that form a global multilayer graph, where the common vertex set represents the entities and the edges on different layers capture the similarities of the entities in term of the different modalities. In this paper, we address the problem of analyzing multi-layer graphs and propose methods for clustering the vertices by efficiently merging the information provided by the multiple modalities. To this end, we propose to combine the characteristics of individual graph layers using tools from subspace analysis on a Grassmann manifold. The resulting combination can then be viewed as a low dimensional representation of the…
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