Bayesian Clustering of Many Garch Models

Bauwens, Luc;Rombouts, Jeroen
(2007) Econometric Reviews — Vol. 26, n° 2-4, p. 365-386 (2007)

Files

pdfdocument.pdf
  • Restricted Access
  • Adobe PDF
  • 489.28 KB

Details

Authors
  • Bauwens, Lucorcid-logoUCLouvain
    Author
  • Rombouts, Jeroen
    Author
Abstract
We consider the estimation of a large number of GARCH models, of the order of several hundreds. Our interest lies in the identification of common structures in the volatility dynamics of the univariate time series. To do so, we classify the series in an unknown number of clusters. Within a cluster, the series share the same model and the same parameters. Each cluster contains therefore similar series. We do not know a priori which series belongs to which cluster. The model is a finite mixture of distributions, where the component weights are unknown parameters and each component distribution has its own conditional mean and variance. Inference is done by the Bayesian approach, using data augmentation techniques. Simulations and an illustration using data on U.S. stocks are provided.
Affiliations

Citations

Bauwens, L., & Rombouts, J. (2007). Bayesian Clustering of Many Garch Models. Econometric Reviews, 26(2-4), 365-386. https://doi.org/10.1080/07474930701220576 (Original work published 2007)