Focused Information Criterion and Model Averaging in Quantile Regression |
| |
Authors: | Jiang Du Tianfa Xie |
| |
Affiliation: | College of Applied Sciences , Beijing University of Technology , P. R. China |
| |
Abstract: | In this article, we study model selection and model averaging in quantile regression. Under general conditions, we develop a focused information criterion and a frequentist model average estimator for the parameters in quantile regression model, and examine their theoretical properties. The new procedures provide a robust alternative to the least squares method or likelihood method, and a major advantage of the proposed procedures is that when the variance of random error is infinite, the proposed procedure works beautifully while the least squares method breaks down. A simulation study and a real data example are presented to show that the proposed method performs well with a finite sample and is easy to use in practice. |
| |
Keywords: | Focused information criterion Model selection Model uncertainty Quantile regression |
|
|