Implementing Modifed Burg Algorithms in Multivariate Subset Autoregressive Modeling
The large number of parameters in subset vector autoregressive models often leads one to procure fast, simple, and efficient alternatives or precursors to maximum likelihood estimation. We present the solution of the multivariate subset Yule-Walker equations as one such alternative. In recent work, Brockwell, Dahlhaus, and Trindade (2002), show that the Yule-Walker estimators can actually be obtained as a special case of a general recursive Burg-type algorithm. We illustrate the structure of this Algorithm, and discuss its implementation in a high-level programming language. Applications of the Algorithm in univariate and bivariate modeling are showcased in examples. Univariate and bivariate versions of the Algorithm written in Fortran 90 are included in the appendix, and their use illustrated.
Year of publication: |
2003-02-03
|
---|---|
Authors: | Trindade, A. Alexandre |
Published in: |
Journal of Statistical Software. - American Statistical Association. - Vol. 08.2003, i05
|
Publisher: |
American Statistical Association |
Saved in:
Saved in favorites
Similar items by person
-
The Effects of Monetary Policy Shocks on Income Inequality Across U.S. States
Namini, Sima Siami, (2020)
-
Extending the State-Space Model to Accommodate Missing Values in Responses and Covariates
Naranjo, Arlene, (2013)
-
Approximating the distributions of estimators of financial risk under an asymmetric Laplace law
Trindade, A. Alexandre, (2007)
- More ...