Exact Bayesian regression of piecewise constant functions

Date

2007

Authors

Hutter, Marcus

Journal Title

Journal ISSN

Volume Title

Publisher

International Society for Bayesian Analysis

Abstract

We derive an exact and efficient Bayesian regression algorithm for piecewise constant functions of unknown segment number, boundary locations, and levels. The derivation works for any noise and segment level prior, e.g. Cauchy which can handle outliers. We derive simple but good estimates for the in-segment variance. We also propose a Bayesian regression curve as a better way of smoothing data without blurring boundaries. The Bayesian approach also allows straightforward determination of the evidence, break probabilities and error estimates, useful for model selection and significance and robustness studies. We discuss the performance on synthetic and real-world examples. Many possible extensions are discussed.

Description

Keywords

Bayesian regression, exact polynomial algorithm, non-parametric inference, piecewise constant function, dynamic programming, change point problem

Citation

Source

Bayesian Analysis

Type

Journal article

Book Title

Entity type

Access Statement

Open Access

License Rights

Restricted until