Toggle Main Menu Toggle Search

Open Access padlockePrints

Online Semiparametric Regression via Sequential Monte Carlo

Lookup NU author(s): Professor Chris OatesORCiD

Downloads

Full text for this publication is not currently held within this repository. Alternative links are provided below where available.


Abstract

© 2025 Statistical Society of Australia.We develop and describe online algorithms for performing online semiparametric regression analyses. Earlier work on this topic is by Luts, Broderick and Wand (2014), Journal of Computational and Graphical Statististics, 23, 589–615, where online mean-field variational Bayes (MFVB) was employed. In this article we instead develop sequential Monte Carlo approaches to circumvent well-known inaccuracies inherent in variational approaches. For Gaussian response semiparametric regression models, our new algorithms share the online MFVB property of only requiring updating and storage of sufficient statistics quantities of streaming data. In the non-Gaussian case, accurate online semiparametric regression requires the full data to be kept in storage. The new algorithms allow for new options concerning accuracy–speed trade-offs for online semiparametric regression.


Publication metadata

Author(s): Menictas M, Oates CJ, Wand MP

Publication type: Article

Publication status: Published

Journal: Australian & New Zealand Journal of Statistics

Year: 2024

Pages: epub ahead of print

Online publication date: 26/02/2025

Acceptance date: 01/08/2024

ISSN (print): 1369-1473

ISSN (electronic): 1467-842X

Publisher: John Wiley & Sons, Inc.

URL: https://doi.org/10.1111/anzs.12440

DOI: 10.1111/anzs.12440


Altmetrics


Share