Out-of-sample predictability in predictive regressions with many predictor candidates
Articles
Overview
published in
publication date
- July 2024
issue
- 3
volume
- 40
Digital Object Identifier (DOI)
International Standard Serial Number (ISSN)
- 0169-2070
Electronic International Standard Serial Number (EISSN)
- 1872-8200
abstract
- This paper is concerned with detecting the presence of out-of-sample predictability in linear predictive regressions with a potentially large set of candidate predictors. We propose a procedure based on out-of-sample MSE comparisons that is implemented in a pairwise manner using one predictor at a time. This results in an aggregate test statistic that is standard normally distributed under the global null hypothesis of no linear predictability. Predictors can be highly persistent, purely stationary, or a combination of both. Upon rejecting the null hypothesis, we introduce a predictor screening procedure designed to identify the most active predictors. An empirical application to key predictors of US economic activity illustrates the usefulness of our methods. It highlights the important forward-looking role played by the series of manufacturing new orders.
Classification
keywords
- forecasting; high dimensional predictability; nested models; out-of-sample; predictive regression