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  4. Efficient Bayesian estimation and combination of GARCH-type models

Efficient Bayesian estimation and combination of GARCH-type models

Author(s)
Ardia, David  
Chaire de gestion des risques financiers  
Hoogerheide, Lennart
Publisher
London: Klaus Bocker
Date issued
2010
In
Rethinking Risk Measurement and Reporting
No
II
From page
1
To page
19
Serie
Risk Books
Subjects
GARCH Bayesian inference MCMC marginal likelihood Bayesian model averaging adaptive mixture of Student-t distributions importance sampling
Abstract
This chapter proposes an up-to-date review of estimation strategies available for the Bayesian inference of GARCH-type models. The emphasis is put on a novel efficient procedure named AdMitIS. The methodology automatically constructs a mixture of Student-t distributions as an approximation to the posterior density of the model parameters. This density is then used in importance sampling for model estimation, model selection and model combination. The procedure is fully automatic which avoids difficult and time consuming tuning of MCMC strategies. The AdMitIS methodology is illustrated with an empirical application to S&P index log-returns where non-nested GARCH-type models are estimated and combined to predict the distribution of next-day ahead log-returns.
Publication type
book part
Identifiers
https://libra.unine.ch/handle/20.500.14713/26196
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MPRA_paper_22919.pdf

Type

Main Article

Size

236.33 KB

Format

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