Gibbs random fields play an important role in statistics, for example the autologistic model is commonly used to model the spatial distribution of binary variables defined on a lattice. However they are complicated to work with due to an intractability of the likelihood function. It is therefore natural to consider tractable approximations to the likelihood function. Composite likelihoods offer a principled approach to constructing such approximation. The contribution of this paper is to examine the performance of a collection of composite likelihood approximations in the context of Bayesian inference
La constante de normalisation des champs de Markov se présente sous la forme d'une intégrale hauteme...
Gibbs random fields are polymorphous statistical models that can be used to analyse different types ...
Gibbs random fields (GRF) are polymorphous statistical models that can be used to analyse di®erent t...
Gibbs random fields play an important role in statistics, however, the resulting likelihood is typic...
International audienceGibbs random fields play an important role in statistics, however, the resulti...
This paper proposes and discusses the use of composite marginal likelihoods for Bayesian inference. ...
This paper proposes and discusses the use of composite marginal like- lihoods for Bayesian inference...
While the likelihood function plays a central role in the theory of statistical inference for parame...
While the likelihood function plays a central role in the theory of statistical inference for parame...
While the likelihood function plays a central role in the theory of statistical inference for parame...
Both approximate Bayesian computation (ABC) and composite likelihood methods are useful for Bayesian...
A composite likelihood consists of a combination of valid likelihood objects, and in particular it i...
A composite likelihood consists of a combination of valid likelihood objects, and in particular it i...
A composite likelihood is usually constructed by multiplying a collection of lower dimensional margi...
La constante de normalisation des champs de Markov se présente sous la forme d'une intégrale hauteme...
La constante de normalisation des champs de Markov se présente sous la forme d'une intégrale hauteme...
Gibbs random fields are polymorphous statistical models that can be used to analyse different types ...
Gibbs random fields (GRF) are polymorphous statistical models that can be used to analyse di®erent t...
Gibbs random fields play an important role in statistics, however, the resulting likelihood is typic...
International audienceGibbs random fields play an important role in statistics, however, the resulti...
This paper proposes and discusses the use of composite marginal likelihoods for Bayesian inference. ...
This paper proposes and discusses the use of composite marginal like- lihoods for Bayesian inference...
While the likelihood function plays a central role in the theory of statistical inference for parame...
While the likelihood function plays a central role in the theory of statistical inference for parame...
While the likelihood function plays a central role in the theory of statistical inference for parame...
Both approximate Bayesian computation (ABC) and composite likelihood methods are useful for Bayesian...
A composite likelihood consists of a combination of valid likelihood objects, and in particular it i...
A composite likelihood consists of a combination of valid likelihood objects, and in particular it i...
A composite likelihood is usually constructed by multiplying a collection of lower dimensional margi...
La constante de normalisation des champs de Markov se présente sous la forme d'une intégrale hauteme...
La constante de normalisation des champs de Markov se présente sous la forme d'une intégrale hauteme...
Gibbs random fields are polymorphous statistical models that can be used to analyse different types ...
Gibbs random fields (GRF) are polymorphous statistical models that can be used to analyse di®erent t...