Author:
Wei Xinyi,Liu Xiaohui,Fan Yawen,Tan Li,Liu Qing
Abstract
A direct application of autoregressive (AR) models with independent and identically distributed (iid) errors is sometimes inadequate to fit the time series data well. A natural alternative is further to assume the model errors following an AR process, whose structure however has essential impacts on the statistical inferences related to the autoregressive models. In this paper, we construct a new unified test for checking the AR error structure based on the empirical likelihood method. The proposed test is desirable because its limit distribution is always chi-squared regardless of whether the autoregressive model is stationary or non-stationary, with or without an intercept term. Some simulations are also provided to illustrate the finite sample performance of this test. Finally, we apply the proposed test to a financial real data set.
Subject
Geometry and Topology,Logic,Mathematical Physics,Algebra and Number Theory,Analysis
Reference31 articles.
1. Asymptotic inference for nearly nonstationary AR (1) processes;Chan;Ann. Stat.,1987
2. Towards a unified asymptotic theory for autoregression;Phillips;Biometrika,1987
3. Elliott, G., Rothenberg, T.J., and Stock, J.H. (1992). Efficient Tests for an Autoregressive Unit Root, National Bureau of Economic Research.
4. Uniform inference in autoregressive models;Mikusheva;Econometrica,2007
5. Inference for the tail index of a GARCH(1,1) model and an AR(1) model with ARCH(1) errors;Zhang;Econom. Rev.,2019
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