English

Product Graph Learning from Multi-domain Data with Sparsity and Rank Constraints

Machine Learning 2020-12-16 v1 Signal Processing

Abstract

In this paper, we focus on learning product graphs from multi-domain data. We assume that the product graph is formed by the Cartesian product of two smaller graphs, which we refer to as graph factors. We pose the product graph learning problem as the problem of estimating the graph factor Laplacian matrices. To capture local interactions in data, we seek sparse graph factors and assume a smoothness model for data. We propose an efficient iterative solver for learning sparse product graphs from data. We then extend this solver to infer multi-component graph factors with applications to product graph clustering by imposing rank constraints on the graph Laplacian matrices. Although working with smaller graph factors is computationally more attractive, not all graphs may readily admit an exact Cartesian product factorization. To this end, we propose efficient algorithms to approximate a graph by a nearest Cartesian product of two smaller graphs. The efficacy of the developed framework is demonstrated using several numerical experiments on synthetic data and real data.

Keywords

Cite

@article{arxiv.2012.08090,
  title  = {Product Graph Learning from Multi-domain Data with Sparsity and Rank Constraints},
  author = {Sai Kiran Kadambari and Sundeep Prabhakar Chepuri},
  journal= {arXiv preprint arXiv:2012.08090},
  year   = {2020}
}

Comments

13 pages, 5 figures. Submitted to TSP

R2 v1 2026-06-23T20:58:39.671Z