Fractionally Integrated Long Horizon Regressions

Jin Lee, National University of Singapore

Abstract

We consider long horizon regression models where the disturbance and the predictor are possibly fractionally integrated. Asymptotic distributions of the OLS estimator and of the test statistic are given. It is found that the t-statistic diverges at the rate of square root of T, where T is the sample size. Thus, it is desirable to use the scaled test statistic, as it converges to a well-defined limit, which depends on the memory parameters through the functionals on the fractional Wiener processes. Simulation studies present some empirical distributions of the scaled test statistic according to different values of the memory parameters. The proposed model with fractional processes is empirically more tractable than the model with local to unity processes, since memory parameters are consistently estimable unlike localizing parameters in the latter model.

Recommended Citation

Jin Lee (2007) "Fractionally Integrated Long Horizon Regressions", Studies in Nonlinear Dynamics & Econometrics: Vol. 11: No. 1, Article 6.
http://www.bepress.com/snde/vol11/iss1/art6

Related Files

lee_code.zip (1 kB)
Code

 
 
 
 

ISSN: 1558-3708 ©1999-2009 The Berkeley Electronic Press™ All rights reserved.

To submit, subscribe, recommend this journal to your library, or sign up for email alerts, please visit: http://www.bepress.com/snde