Unifying Estimation and Inference for Linear Regression with Stationary and Integrated or Near-Integrated Variables

Abstract There is a discrepancy in the limiting distributions of least-squares estimators for stationary and integrated variables. For statistical inference, it must be decided which distribution should be used in advance. This motivates us to develop a unifying inference procedure based on weighted...

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Veröffentlicht in:Journal of financial econometrics 2024-12, Vol.22 (5), p.1397-1420
Hauptverfasser: Hong, Shaoxin, Henderson, Daniel J, Jiang, Jiancheng, Ni, Qingshan
Format: Artikel
Sprache:eng
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Zusammenfassung:Abstract There is a discrepancy in the limiting distributions of least-squares estimators for stationary and integrated variables. For statistical inference, it must be decided which distribution should be used in advance. This motivates us to develop a unifying inference procedure based on weighted estimation. The asymptotic distributions of the proposed estimators are developed and a random weighting bootstrap method is proposed for constructing confidence regions. The proposed method outperforms existing methods (with time constant or time-varying error variance) in simulations. We further study the predictability of asset returns in a setting where some of our state variables are endogenous.
ISSN:1479-8409
1479-8417
DOI:10.1093/jjfinec/nbad030