Bayesian joint state and parameter tracking in autoregressive models

Abstract

We address the problem of online Bayesian state and parameter tracking in autoregressive (AR) models with time-varying process noise variance. The involved marginalization and expectation integrals cannot be analytically solved. Moreover, the online tracking constraint makes sampling and batch learning methods unsuitable for this problem. We propose a hybrid variational message passing algorithm that robustly tracks the time-varying dynamics of the latent states, AR coefficients and process noise variance. Since message passing in a factor graph is a highly modular inference approach, the proposed methods easily extend to other non-stationary dynamic modeling problems.

Publication
Conference on Learning for Dynamics & Control
İsmail Şenöz
İsmail Şenöz
Chief Scientist
LazyDynamics

Ismail Senoz is a co-founder & chief scientist of Lazy Dynamics

Albert Podusenko
Albert Podusenko
Chief Executive Officer LazyDynamics

Albert Podusenko is a founder & CEO of Lazy Dynamics.

Wouter Kouw
Wouter Kouw
Assistant professor

I am an assistant professor working on active inference for mobile robots.

Bert de Vries
Bert de Vries
Professor

I am a professor at TU Eindhoven and team leader of BIASlab.