The Importance Sampling method is used as an alternative approach to MCMC in repeated Bayesian estimations. In the particular context of numerous data sets, MCMC algorithms have to be called on several times which may become computationally expensive. Since Importance Sampling requires a sample from a posterior distribution, our idea is to use MCMC to generate only a certain number of Markov chains and use them later in the subsequent IS estimations. For each Importance Sampling procedure, the suitable chain is selected by one of three criteria we present here. The first and second criteria are based on the L¹ norm of the difference between two posterior distributions and their Kullback-Leibler divergence respectively. The third criterion r...
Importance sampling is a variance reduction technique for efficient estimation of rare-event probabi...
International audienceL'Importance Sampling combiné avec les algorithmes MCMC est proposée ici dans ...
National audienceCombining extreme value analysis with Bayesian methods has several advantages, such...
International audienceAbstract: The Importance Sampling method is used as an alternative approach to...
Importance sampling is a classical Monte Carlo technique in which a random sample from one probabili...
Since its introduction in the early 90's, the idea of using importance sampling (IS) with Markov cha...
Importance sampling methods can be iterated like MCMC algorithms, while being more robust against de...
Bayesian inference under a set of priors, called robust Bayesian analysis, allows for estimation of ...
AbstractUsually, the Bayesian inference of the GARCH model is preferably performed by the Markov Cha...
Markov chain Monte Carlo (MCMC) is an approach to parameter inference in Bayesian models that is bas...
This paper is concerned with the problems of posterior simulation and model choice for Poisson panel...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
A generic Markov Chain Monte Carlo (MCMC) framework, based upon Efficient Importance Sampling (EIS) ...
Sequential Monte Carlo methods are powerful algorithms to sample from sequences of complex probabili...
In parameter estimation problems one computes a posterior distribution over uncertain parameters def...
Importance sampling is a variance reduction technique for efficient estimation of rare-event probabi...
International audienceL'Importance Sampling combiné avec les algorithmes MCMC est proposée ici dans ...
National audienceCombining extreme value analysis with Bayesian methods has several advantages, such...
International audienceAbstract: The Importance Sampling method is used as an alternative approach to...
Importance sampling is a classical Monte Carlo technique in which a random sample from one probabili...
Since its introduction in the early 90's, the idea of using importance sampling (IS) with Markov cha...
Importance sampling methods can be iterated like MCMC algorithms, while being more robust against de...
Bayesian inference under a set of priors, called robust Bayesian analysis, allows for estimation of ...
AbstractUsually, the Bayesian inference of the GARCH model is preferably performed by the Markov Cha...
Markov chain Monte Carlo (MCMC) is an approach to parameter inference in Bayesian models that is bas...
This paper is concerned with the problems of posterior simulation and model choice for Poisson panel...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
A generic Markov Chain Monte Carlo (MCMC) framework, based upon Efficient Importance Sampling (EIS) ...
Sequential Monte Carlo methods are powerful algorithms to sample from sequences of complex probabili...
In parameter estimation problems one computes a posterior distribution over uncertain parameters def...
Importance sampling is a variance reduction technique for efficient estimation of rare-event probabi...
International audienceL'Importance Sampling combiné avec les algorithmes MCMC est proposée ici dans ...
National audienceCombining extreme value analysis with Bayesian methods has several advantages, such...