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Predictive quantile regression with mixed roots...
Journal article

Predictive quantile regression with mixed roots and increasing dimensions: The ALQR approach

Abstract

In this paper we propose the adaptive lasso for predictive quantile regression (ALQR). Reflecting empirical findings, we allow predictors to have various degrees of persistence and exhibit different signal strengths. The number of predictors is allowed to grow with the sample size. We study regularity conditions under which stationary, local unit root, and cointegrated predictors are present simultaneously. We next show the convergence rates, model selection consistency, and asymptotic distributions of ALQR. We apply the proposed method to the out-of-sample quantile prediction problem of stock returns and find that it outperforms the existing alternatives. We also provide numerical evidence from additional Monte Carlo experiments, supporting the theoretical results.

Authors

Fan R; Lee JH; Shin Y

Journal

Journal of Econometrics, Vol. 237, No. 2,

Publisher

Elsevier

Publication Date

December 1, 2023

DOI

10.1016/j.jeconom.2022.11.006

ISSN

0304-4076

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