textabstractThis paper 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. Several non-nested GARCH-type models are estimated and combined to predict the distribution ...
In this paper we use Markov chain Monte Carlo (MCMC) methods in order to estimate and compare GARCH ...
This paper presents the R package bayesGARCH which provides functions for the Bayesian estimation of...
The GARCH (p, q) model is a very interesting stochastic process with widespread applications and a c...
This paper proposes an up-to-date review of estimation strategies available for the Bayesian inferen...
This chapter proposes an up-to-date review of estimation strategies available for the Bayesian infer...
AbstractUsually, the Bayesian inference of the GARCH model is preferably performed by the Markov Cha...
In this paper, we perform Bayesian inference and prediction for a GARCH model where the innovations ...
We perform the Bayesian inference of a GARCH model by the Metropolis-Hastings algorithm with an adap...
The advantages of sequential Monte Carlo (SMC) are exploited to develop parameter estimation and mod...
Bayesian inference and prediction for a generalized autoregressive conditional heteroskedastic (GARC...
This thesis develops a new and principled approach for estimation, prediction and model selection fo...
textabstractThis note presents the R package bayesGARCH (Ardia, 2007) which provides functions for t...
This note presents the R package bayesGARCH which provides functions for the Bayesian estimation of ...
This paper describes a GAUSS program of a Markov-chain sampling algorithm for GARCH models proposed ...
The main aim of this paper is to present a Bayesian analysis of Multivariate GARCH(l, m) (M-GARCH) m...
In this paper we use Markov chain Monte Carlo (MCMC) methods in order to estimate and compare GARCH ...
This paper presents the R package bayesGARCH which provides functions for the Bayesian estimation of...
The GARCH (p, q) model is a very interesting stochastic process with widespread applications and a c...
This paper proposes an up-to-date review of estimation strategies available for the Bayesian inferen...
This chapter proposes an up-to-date review of estimation strategies available for the Bayesian infer...
AbstractUsually, the Bayesian inference of the GARCH model is preferably performed by the Markov Cha...
In this paper, we perform Bayesian inference and prediction for a GARCH model where the innovations ...
We perform the Bayesian inference of a GARCH model by the Metropolis-Hastings algorithm with an adap...
The advantages of sequential Monte Carlo (SMC) are exploited to develop parameter estimation and mod...
Bayesian inference and prediction for a generalized autoregressive conditional heteroskedastic (GARC...
This thesis develops a new and principled approach for estimation, prediction and model selection fo...
textabstractThis note presents the R package bayesGARCH (Ardia, 2007) which provides functions for t...
This note presents the R package bayesGARCH which provides functions for the Bayesian estimation of ...
This paper describes a GAUSS program of a Markov-chain sampling algorithm for GARCH models proposed ...
The main aim of this paper is to present a Bayesian analysis of Multivariate GARCH(l, m) (M-GARCH) m...
In this paper we use Markov chain Monte Carlo (MCMC) methods in order to estimate and compare GARCH ...
This paper presents the R package bayesGARCH which provides functions for the Bayesian estimation of...
The GARCH (p, q) model is a very interesting stochastic process with widespread applications and a c...