Publication detail

Total least squares from a Bayesian perspective: Incorporating data-informed forgetting

DOKOUPIL, J. VÁCLAVEK, P.

Original Title

Total least squares from a Bayesian perspective: Incorporating data-informed forgetting

Type

conference paper

Language

English

Original Abstract

The real-time estimation of error-in-variables (EIV) models with unknown time-varying parameters is considered and resolved using a Bayesian framework. The stochastic model under consideration is a regression-type model that accounts for inherently inaccurate measurements, which are corrupted by the normal noise. The EIV model identification is traditionally performed via total least squares (TLS), relying on computationally intensive methods to numerically obtain a point estimate. Such a concept, despite its theoretical appeal, nevertheless lacks the ability to quantify the uncertainty associated with the parameter estimates. Thus, this limitation hinders the concept from being combined with the statistical decision-making strategies. The paper opens the way towards enriching the standard TLS in this respect. The enrichment is achieved by projecting the unnormalized posterior generated by the EIV parametric models onto the normal-Wishart distribution. This projection is made optimal by minimizing the Kullback-Leibler distance between the unnormalized and the normal-Wishart posteriors while imposing a hard equality constraint on the mean parameter scalar product. By establishing credible intervals for both the regression parameters and the noise precision, the resultant procedure is additionally endowed with Bayesian data-informed forgetting, which allows for effective operation in nonstationary environments.

Keywords

Error-in-variables system; variational Bayes method; normal-Wishart distribution; data-informed forgetting

Authors

DOKOUPIL, J.; VÁCLAVEK, P.

Released

16. 12. 2024

Publisher

IEEE

Location

NEW YORK

ISBN

979-8-3503-1633-9

Book

63th IEEE Conference on Decision and Control

Pages from

5737

Pages to

5744

Pages count

8

URL

BibTex

@inproceedings{BUT197761,
  author="Jakub {Dokoupil} and Pavel {Václavek}",
  title="Total least squares from a Bayesian perspective: Incorporating data-informed forgetting",
  booktitle="63th IEEE Conference on Decision and Control",
  year="2024",
  pages="5737--5744",
  publisher="IEEE",
  address="NEW YORK",
  doi="10.1109/CDC56724.2024.10885920",
  isbn="979-8-3503-1633-9",
  url="https://ieeexplore.ieee.org/document/10885920/metrics#metrics"
}