Open Access
2024 Cross-Validatory Model Selection for Bayesian Autoregressions with Exogenous Regressors
Alex Cooper, Dan Simpson, Lauren Kennedy, Catherine Forbes, Aki Vehtari
Author Affiliations +
Bayesian Anal. Advance Publication 1-25 (2024). DOI: 10.1214/23-BA1409

Abstract

Bayesian cross-validation (CV) is a popular method for predictive model assessment that is simple to implement and broadly applicable. A wide range of CV schemes is available for time series applications, including generic leave-one-out (LOO) and K-fold methods, as well as specialized approaches intended to deal with serial dependence such as leave-future-out (LFO), h-block, and hv-block.

Existing large-sample results show that both specialized and generic methods are applicable to models of serially-dependent data. However, large sample consistency results overlook the impact of sampling variability on accuracy in finite samples. Moreover, the accuracy of a CV scheme depends on many aspects of the procedure. We show that poor design choices can lead to elevated rates of adverse selection.

In this paper, we consider the problem of identifying the regression component of an important class of models of data with serial dependence, autoregressions of order p with q exogenous regressors (ARX(p,q)), under the logarithmic scoring rule. We show that when serial dependence is present, scores computed using the joint (multivariate) density have lower variance and better model selection accuracy than the popular pointwise estimator. In addition, we present a detailed case study of the special case of ARX models with fixed autoregressive structure and variance. For this class, we derive the finite-sample distribution of the CV estimators and the model selection statistic. We conclude with recommendations for practitioners.

Funding Statement

AC’s work was supported in part by an Australian Government Research Training Program Scholarship. AV acknowledges the Academy of Finland Flagship program: Finnish Center for Artificial Intelligence, and Academy of Finland project (340721). CF acknowledges financial support under National Science Foundation Grant SES-1921523. LK gratefully recognises support from the National Institutes of Health (5R01AG067149-02).

Acknowledgments

The authors are grateful for the input of two anonymous referees and an associate editor. Any remaining errors are our own.

Citation

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Alex Cooper. Dan Simpson. Lauren Kennedy. Catherine Forbes. Aki Vehtari. "Cross-Validatory Model Selection for Bayesian Autoregressions with Exogenous Regressors." Bayesian Anal. Advance Publication 1 - 25, 2024. https://doi.org/10.1214/23-BA1409

Information

Published: 2024
First available in Project Euclid: 15 January 2024

arXiv: 2301.08276
Digital Object Identifier: 10.1214/23-BA1409

Keywords: cross-validation , model comparison , serial dependence , uncertainty

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