Learning Time-Varying Graphs from Online Data
Alberto Natali, Elvin Isufi, Mario Coutino, Geert Leus

TL;DR
This paper introduces a versatile, model-independent framework for learning time-varying graphs from online data, capable of handling non-stationary environments and various graph models through composite optimization and recursive covariance updates.
Contribution
It presents a novel, general framework for time-varying graph learning that unifies multiple models and incorporates temporal dynamics for improved convergence and adaptability.
Findings
Framework effectively handles non-stationary data environments.
Specialized algorithms for GGM, SEM, and SBM models.
Theoretical guarantees and extensive numerical validation.
Abstract
This work proposes an algorithmic framework to learn time-varying graphs from online data. The generality offered by the framework renders it model-independent, i.e., it can be theoretically analyzed in its abstract formulation and then instantiated under a variety of model-dependent graph learning problems. This is possible by phrasing (time-varying) graph learning as a composite optimization problem, where different functions regulate different desiderata, e.g., data fidelity, sparsity or smoothness. Instrumental for the findings is recognizing that the dependence of the majority (if not all) data-driven graph learning algorithms on the data is exerted through the empirical covariance matrix, representing a sufficient statistic for the estimation problem. Its user-defined recursive update enables the framework to work in non-stationary environments, while iterative algorithms building…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Human Mobility and Location-Based Analysis
