English

Posterior shrinkage towards linear subspaces

Methodology 2024-01-17 v1

Abstract

It is common to hold prior beliefs that are not characterized by points in the parameter space but instead are relational in nature and can be described by a linear subspace. While some previous work has been done to account for such prior beliefs, the focus has primarily been on point estimators within a regression framework. We argue, however, that prior beliefs about parameters ought to be encoded into the prior distribution rather than in the formation of a point estimator. In this way, the prior beliefs help shape \textit{all} inference. Through exponential tilting, we propose a fully generalizable method of taking existing prior information from, e.g., a pilot study, and combining it with additional prior beliefs represented by parameters lying on a linear subspace. We provide computationally efficient algorithms for posterior inference that, once inference is made using a non-tilted prior, does not depend on the sample size. We illustrate our proposed approach on an antihypertensive clinical trial dataset where we shrink towards a power law dose-response relationship, and on monthly influenza and pneumonia data where we shrink moving average lag parameters towards smoothness. Software to implement the proposed approach is provided in the R package \verb+SUBSET+ available on GitHub.

Keywords

Cite

@article{arxiv.2401.07820,
  title  = {Posterior shrinkage towards linear subspaces},
  author = {Daniel K. Sewell},
  journal= {arXiv preprint arXiv:2401.07820},
  year   = {2024}
}
R2 v1 2026-06-28T14:17:15.972Z