A Non-linear Approach with Long Range Dependence based on Chebyshev Polynomials
This paper examines the interaction between non-linear deterministic trends and long run dependence by means of employing Chebyshev time polynomials and assuming that the detrended series displays long memory with the pole or singularity in the spectrum occurring at one or more possibly non-zero frequencies. The combination of the non-linear structure with the long memory framework produces a model which is linear in parameters and therefore it permits the estimation of the deterministic terms by standard OLS-GLS methods. Moreover, we present a procedure that permits us to test (possibly fractional) orders of integration at various frequencies in the presence of the Chebyshev trends with no effect on the standard limit distribution of the method. Several Monte Carlo experiments are conducted and the results indicate that the method performs well, and an empirical application, using data of real exchange rates is also carried out at the end of the article.
Year of publication: |
2012-11-14
|
---|---|
Authors: | Gil-Alana, Luis A. ; Cuestas, Juan Carlos |
Institutions: | School of Economics and Business Administration, University of Navarra |
Saved in:
Saved in favorites
Similar items by person
-
The sustainability of European external debt : what have we learned?
Cuestas, Juan Carlos, (2015)
-
Fractional Integration and Cointegration in US Financial Time Series Data
Gil-Alana, Luis A., (2012)
-
The Deaton paradox in a long memory context with structural breaks
Gil-Alana, Luis A., (2009)
- More ...