Iliyan Georgiev
A Bootstrap Stationarity Test for Predictive Regression Invalidity
Georgiev, Iliyan; Harvey, David I.; Leybourne, Stephen J.; Taylor, A.M. Robert
Authors
DAVID HARVEY dave.harvey@nottingham.ac.uk
Professor of Econometrics
STEVE LEYBOURNE steve.leybourne@nottingham.ac.uk
Professor of Econometrics
A.M. Robert Taylor
Abstract
In order for predictive regression tests to deliver asymptotically valid inference, account has to be taken of the degree of persistence of the predictors under test. There is also a maintained assumption that any predictability in the variable of interest is purely attributable to the predictors under test. Violation of this assumption by the omission of relevant persistent predictors renders the predictive regression invalid with the result that both the finite sample and asymptotic size of the predictability tests can be significantly infated, with the potential therefore to spuriously indicate predictability. In response we propose a predictive regression invalidity test based on a stationarity testing approach. To allow for an unknown degree of persistence in the putative predictors, and for heteroskedasticity in the data, we implement our proposed test using a fixed regressor wild bootstrap procedure. We demonstrate the asymptotic validity of the proposed bootstrap test. This entails demonstrating that the asymptotic distribution of the bootstrap statistic, conditional on the data, is the same (to first-order) as the asymptotic null distribution of the statistic computed on the original data, conditional on the predictor. This corrects a long-standing error in the bootstrap literature whereby it is incorrectly argued that for strongly persistent regressors the validity of the fixed regressor bootstrap obtains through equivalence to an unconditional limit distribution. Our bootstrap results are therefore of interest in their own right and are likely to have important applications beyond the present context. An illustration is given by re-examining the results relating to U.S. stock returns data in Campbell and Yogo (2006).
Citation
Georgiev, I., Harvey, D. I., Leybourne, S. J., & Taylor, A. R. (2018). A Bootstrap Stationarity Test for Predictive Regression Invalidity. Journal of Business and Economic Statistics, 37(3), 528-541. https://doi.org/10.1080/07350015.2017.1385467
Journal Article Type | Article |
---|---|
Acceptance Date | Aug 28, 2017 |
Online Publication Date | May 31, 2018 |
Publication Date | May 31, 2018 |
Deposit Date | Aug 31, 2017 |
Publicly Available Date | Jun 1, 2019 |
Journal | Journal of Business & Economic Statistics |
Print ISSN | 0735-0015 |
Electronic ISSN | 1537-2707 |
Publisher | Taylor and Francis |
Peer Reviewed | Peer Reviewed |
Volume | 37 |
Issue | 3 |
Pages | 528-541 |
DOI | https://doi.org/10.1080/07350015.2017.1385467 |
Keywords | Predictive regression; Granger causality; persistence; stationarity test; fixed regressor wild bootstrap; conditional distribution |
Public URL | https://nottingham-repository.worktribe.com/output/886119 |
Publisher URL | http://www.tandfonline.com/doi/abs/10.1080/07350015.2017.1385467 |
Contract Date | Aug 31, 2017 |
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