Characterization and Inference of Graph Diffusion Processes from Observations of Stationary Signals
Bastien Pasdeloup, Vincent Gripon, Gr\'egoire Mercier, Dominique, Pastor, Michael G. Rabbat

TL;DR
This paper characterizes the set of graphs that can explain stationary signals, providing methods for graph inference and demonstrating their effectiveness through experiments on temperature data.
Contribution
It introduces a convex characterization of graphs compatible with stationary signals and proposes new methods for graph inference based on this framework.
Findings
The set of valid graphs forms a convex set related to covariance eigenvectors.
The proposed methods can effectively recover graphs from noisy observations.
Experimental results on temperature data validate the approach.
Abstract
Many tools from the field of graph signal processing exploit knowledge of the underlying graph's structure (e.g., as encoded in the Laplacian matrix) to process signals on the graph. Therefore, in the case when no graph is available, graph signal processing tools cannot be used anymore. Researchers have proposed approaches to infer a graph topology from observations of signals on its nodes. Since the problem is ill-posed, these approaches make assumptions, such as smoothness of the signals on the graph, or sparsity priors. In this paper, we propose a characterization of the space of valid graphs, in the sense that they can explain stationary signals. To simplify the exposition in this paper, we focus here on the case where signals were i.i.d. at some point back in time and were observed after diffusion on a graph. We show that the set of graphs verifying this assumption has a strong…
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