Statistical inference for autoregressive models under heteroscedasticity of unknown form

Authors
Citation
Ke Zhu, Statistical inference for autoregressive models under heteroscedasticity of unknown form, Annals of statistics , 47(6), 2019, pp. 3185-3215
Journal title
ISSN journal
00905364
Volume
47
Issue
6
Year of publication
2019
Pages
3185 - 3215
Database
ACNP
SICI code
Abstract
This paper provides an entire inference procedure for the autoregressive model under (conditional) heteroscedasticity of unknown form with a finite variance. We first establish the asymptotic normality of the weighted least absolute deviations estimator (LADE) for the model. Second, we develop the random weighting (RW) method to estimate its asymptotic covariance matrix, leading to the implementation of the Wald test. Third, we construct a portmanteau test for model checking, and use the RW method to obtain its critical values. As a special weighted LADE, the feasible adaptive LADE (ALADE) is proposed and proved to have the same efficiency as its infeasible counterpart. The importance of our entire methodology based on the feasible ALADE is illustrated by simulation results and the real data analysis on three U.S. economic data sets.