A Joint Regression Variable and Autoregressive Order Selection Criterion
In linear regression models with autocorrelated errors, we apply the residual likelihood approach to obtain a residual information criterion (RIC), which can jointly select regression variables and autoregressive orders. We show that RIC is a consistent criterion. In addition, our simulation studies indicate that it outperforms heuristic selection criteria - the Akaike information criterion and the Bayesian information criterion - when the signal-to-noise ratio is not weak. Copyright 2004 Blackwell Publishing Ltd.
Year of publication: |
2004
|
---|---|
Authors: | Shi, Peide ; Tsai, Chih-Ling |
Published in: |
Journal of Time Series Analysis. - Wiley Blackwell, ISSN 0143-9782. - Vol. 25.2004, 6, p. 923-941
|
Publisher: |
Wiley Blackwell |
Saved in:
Saved in favorites
Similar items by person
-
Extending the Akaike information criterion to mixture regression models
Naik, Prasad A., (2007)
-
Clarification: Regression model selection-a residual likelihood approach
Leng, Chenlei, (2008)
-
Extending the Akaike Information Criterion to Mixture Regression Models
Naik, Prasad A., (2007)
- More ...