Open Access
September 2023 Robustness Against Conflicting Prior Information in Regression
Philippe Gagnon
Author Affiliations +
Bayesian Anal. 18(3): 841-864 (September 2023). DOI: 10.1214/22-BA1330

Abstract

Including prior information about model parameters is a fundamental step of any Bayesian statistical analysis. It is viewed positively by some as it allows, among others, to quantitatively incorporate expert opinion about model parameters. It is viewed negatively by others because it sets the stage for subjectivity in statistical analysis. Certainly, it creates problems when the inference is skewed due to a conflict with the data collected. According to the theory of conflict resolution (O’Hagan and Pericchi, 2012), a solution to such problems is to diminish the impact of conflicting prior information, yielding inference consistent with the data. This is typically achieved by using heavy-tailed priors. We study both theoretically and numerically the efficacy of such a solution in a regression framework where the prior information about the coefficients takes the form of a product of density functions with known location and scale parameters. We study functions with regularly-varying tails (Student distributions), log-regularly-varying tails (as introduced in Desgagné (2015)), and propose functions with slower tail decays that allow to resolve any conflict that can happen under that regression framework, contrarily to the two previous types of functions. The code to reproduce all numerical experiments is available online.

Funding Statement

The author acknowledges support from NSERC (Natural Sciences and Engineering Research Council of Canada) and FRQNT (Le Fonds de recherche du Québec – Nature et technologies).

Acknowledgments

The author thanks two anonymous referees and an associate editor for helpful suggestions that led to an improved manuscript.

Citation

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Philippe Gagnon. "Robustness Against Conflicting Prior Information in Regression." Bayesian Anal. 18 (3) 841 - 864, September 2023. https://doi.org/10.1214/22-BA1330

Information

Published: September 2023
First available in Project Euclid: 29 August 2022

MathSciNet: MR4626359
Digital Object Identifier: 10.1214/22-BA1330

Keywords: Bayesian statistics , Built-in robustness , constant-tailed priors , heavy-tailed distributions , weak convergence , whole robustness

Vol.18 • No. 3 • September 2023
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