Least absolute deviations estimation for nonstationary vector autoregressive time series models with pure unit roots

Yao ZHENG, Jianhong WU, Wai Keung LI, Guodong LI

Research output: Contribution to journalArticlespeer-review

Abstract

This paper derives the asymptotic distribution of the least absolute deviations estimator for nonstationary vector autoregressive time series models with pure unit roots under mild conditions. As this distribution has a complicated form, many commonly used bootstrap techniques cannot be directly applied. To tackle this problem, we propose a novel hybrid bootstrap method by combining the classical wild bootstrap and the method in [17]. We establish the asymptotic validity of the proposed method and further apply it to construct three bootstrapping panel unit root tests. Monte Carlo experiments support the validity of our inference procedure in finite samples. Copyright © 2023 Statistics and its Interface. All Rights Reserved.

Original languageEnglish
Pages (from-to)199-216
JournalStatistics and its Interface
Volume16
Issue number2
DOIs
Publication statusPublished - Apr 2023

Citation

Zheng, Y., Wu, J., Li, W. K., & Li, G. (2023). Least absolute deviations estimation for nonstationary vector autoregressive time series models with pure unit roots. Statistics and Its Interface, 16(2), 199-216. doi: 10.4310/21-SII721

Keywords

  • Bootstrap
  • Least absolute deviations
  • Panel unit root test
  • Vector autoregression

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