Statistical inference for autoregressive models under heteroscedasticity of unknown form

04/06/2018
by   Ke Zhu, et al.
0

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.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/26/2019

Time series models for realized covariance matrices based on the matrix-F distribution

We propose a new Conditional BEKK matrix-F (CBF) model for the time-vary...
research
07/09/2019

Adaptive inference for a semiparametric GARCH model

This paper considers a semiparametric generalized autoregressive conditi...
research
06/06/2023

Uniform Inference for Cointegrated Vector Autoregressive Processes

Uniformly valid inference for cointegrated vector autoregressive process...
research
11/11/2020

Maximum sampled conditional likelihood for informative subsampling

Subsampling is a computationally effective approach to extract informati...
research
03/05/2018

Banded Spatio-Temporal Autoregressions

We propose a new class of spatio-temporal models with unknown and banded...
research
05/06/2019

Non-standard inference for augmented double autoregressive models with null volatility coefficients

This paper considers an augmented double autoregressive (DAR) model, whi...
research
10/09/2020

Autoregressive Networks

We propose a first-order autoregressive model for dynamic network proces...

Please sign up or login with your details

Forgot password? Click here to reset