This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation maximization) which provides an automatic and flexible two-stage method to approximate a non-elliptical target density kernel – typically a posterior density kernel – using an adaptive mixture of Student t densities as approximating density. In the first stage a mixture of Student t densities is fitted to the target using an expectation maximization algorithm where each step of the optimization procedure is weighted using importance sampling. In the second stage this mixture density is a candidate density for efficient and robust application of importance sampling or the Metropolis-Hastings (MH) method to estimate properties of the target dis...
This introduction to the R package AdMit is a shorter version of Ardia et al. (2009), published in t...
textabstractThis paper presents the parallel computing implementation of the MitISEM algorithm, labe...
This paper presents the parallel computing implementation of the MitISEM algorithm, labeled Parallel...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
textabstractThis paper presents the R package MitISEM, which provides an automatic and flexible meth...
This paper presents the R-package MitISEM (mixture of t by importance sampling weighted expectation ...
textabstractThis paper presents the R package AdMit which provides functions to approximate and samp...
textabstractThis paper presents the R package AdMit which provides flexible functions to approximate...
A class of adaptive sampling methods is introduced for efficient posterior and predictive simulation...
This paper presents the R package AdMit which provides flexible functions to approximate a certain t...
textabstractA class of adaptive sampling methods is introduced for efficient posterior and predictiv...
This introduction to the R package AdMit is a shorter version of Ardia et al. (2009), published in t...
textabstractThis paper presents the parallel computing implementation of the MitISEM algorithm, labe...
This paper presents the parallel computing implementation of the MitISEM algorithm, labeled Parallel...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
textabstractThis paper presents the R package MitISEM, which provides an automatic and flexible meth...
This paper presents the R-package MitISEM (mixture of t by importance sampling weighted expectation ...
textabstractThis paper presents the R package AdMit which provides functions to approximate and samp...
textabstractThis paper presents the R package AdMit which provides flexible functions to approximate...
A class of adaptive sampling methods is introduced for efficient posterior and predictive simulation...
This paper presents the R package AdMit which provides flexible functions to approximate a certain t...
textabstractA class of adaptive sampling methods is introduced for efficient posterior and predictiv...
This introduction to the R package AdMit is a shorter version of Ardia et al. (2009), published in t...
textabstractThis paper presents the parallel computing implementation of the MitISEM algorithm, labe...
This paper presents the parallel computing implementation of the MitISEM algorithm, labeled Parallel...