Online Bayesian system identification in multivariate autoregressive models via message passing

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Abstract

We propose a recursive Bayesian estimation procedure for multivariate autoregressive models with exogenous inputs based on message passing in a factor graph. Unlike recursive least-squares, our method produces full posterior distributions for both the autoregressive coefficients and noise precision. The uncertainties regarding these estimates propagate into the uncertainties on predictions for future system outputs, and support online model evidence calculations. We demonstrate convergence empirically on a synthetic autoregressive system and competitive performance on a double mass-spring-damper system.
Original languageEnglish
Title of host publicationEuropean Control Conference
Number of pages6
Publication statusAccepted/In press - 27 Jun 2025
Event23rd European Control Conference 2025 - Thessaloniki, Greece
Duration: 24 Jun 202527 Jun 2025

Conference

Conference23rd European Control Conference 2025
Country/TerritoryGreece
CityThessaloniki
Period24/06/2527/06/25

Funding

The authors gratefully acknowledge support by the Eindhoven Artificial Intelligence Systems Institute and the Ministry of Education, Culture and Science of the Government of the Netherlands.

Keywords

  • System Identification
  • Stochastic systems
  • Autoregressive models
  • Bayesian filtering
  • Message passing

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