Polynomial Graphical Lasso: Learning Edges From Gaussian Graph-Stationary Signals

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2025-02-21

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Institute of Electrical and Electronics Engineers

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Resumen

This paper introduces Polynomial Graphical Lasso (PGL), a new approach to learning graph structures from nodal signals. Our key contribution lies in modeling the signals as Gaussian and stationary on the graph, enabling the development of a graph learning formulation that combines the strengths of graphical lasso with a more encompassing model. Specifically, we assume that the precision matrix can take any polynomial form of the sought graph, allowing for increased flexibility in modeling nodal relationships. Given the inherent complexity and nonconvexity of the optimization problem, we (i) propose a low-complexity algorithm that alternates between estimating the graph and precision matrices, and (ii) characterize its convergence. We evaluate the performance of PGL through comprehensive numerical simulations using both synthetic and real data, demonstrating its superiority over several alternatives. Overall, this approach presents a significant advancement in graph learning and holds promise for various applications in graph-aware signal analysis and beyond.

Descripción

Spanish AEI (Grant Number: PID2019-105032GB-I00 and PID2022-136887NB-I00) Autonomous Community of Madrid within the ELLIS Unit Madrid framework, URJC/CAM (Grant Number: F861 and PREDOC20-003) Hong Kong GRF research (Grant Number: 16206123) Hong Kong RGC Postdoctoral Fellowship Scheme of Project (Grant Number: PDFS2425-6S05)

Citación

A. Buciulea, J. Ying, A. G. Marques and D. P. Palomar, "Polynomial Graphical Lasso: Learning Edges From Gaussian Graph-Stationary Signals," in IEEE Transactions on Signal Processing, vol. 73, pp. 1153-1167, 2025, doi: 10.1109/TSP.2025.3544376
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