Robust open Bayesian analysis: Overfitting, model uncertainty, and endogeneity issues in multiple regression models

Citation
Pacifico, Antonio, Robust open Bayesian analysis: Overfitting, model uncertainty, and endogeneity issues in multiple regression models, Econometric reviews , 40(2), 2021, pp. 148-176
Journal title
ISSN journal
07474938
Volume
40
Issue
2
Year of publication
2021
Pages
148 - 176
Database
ACNP
SICI code
Abstract
The paper develops a computational method to deal with some open issues related to Bayesian model averaging for multiple linear models: overfitting, model uncertainty, endogeneity issues, and misspecified dynamics. The methodology takes the name of Robust Open Bayesian procedure. It is robust because the Bayesian inference is performed with a set of priors rather than a single prior and open because the model class is not fully known in advance, but rather is defined iteratively by MCMC algorithm. Conjugate informative priors are used to compute exact posterior probabilities. Empirical and simulated examples describe the functioning and performance of the procedure. Discussions with related works are also accounted for.