English

Kernel-based Joint Multiple Graph Learning and Clustering of Graph Signals

Signal Processing 2023-11-08 v2 Machine Learning

Abstract

Within the context of Graph Signal Processing (GSP), Graph Learning (GL) is concerned with the inference of the graph's underlying structure from nodal observations. However, real-world data often contains diverse information, necessitating the simultaneous clustering and learning of multiple graphs. In practical applications, valuable node-specific covariates, represented as kernels, have been underutilized by existing graph signal clustering methods. In this letter, we propose a new framework, named Kernel-based joint Multiple GL and clustering of graph signals (KMGL), that leverages a multi-convex optimization approach. This allows us to integrate node-side information, construct low-pass filters, and efficiently solve the optimization problem. The experiments demonstrate that KMGL significantly enhances the robustness of GL and clustering, particularly in scenarios with high noise levels and a substantial number of clusters. These findings underscore the potential of KMGL for improving the performance of GSP methods in diverse, real-world applications.

Keywords

Cite

@article{arxiv.2310.19005,
  title  = {Kernel-based Joint Multiple Graph Learning and Clustering of Graph Signals},
  author = {Mohamad H. Alizade and Aref Einizade and Jhony H. Giraldo},
  journal= {arXiv preprint arXiv:2310.19005},
  year   = {2023}
}

Comments

6 pages, 3 figures

R2 v1 2026-06-28T13:05:04.707Z