In the presence of nuisance parameters, we discuss a one-parameter Bayesian analysis based on a pseudo-likelihood assuming a default prior distribution for the parameter of interest only. Although this way to proceed cannot always be considered as orthodox in the Bayesian perspective, it is of interest to evaluate whether the use of suitable pseudo-likelihoods may be proposed for Bayesian inference. Attention is focused in the context of regression models, in particular on inference about a scalar regression coefficient in various multiple regression models, i.e. scale and regression models with non-normal errors, non-linear normal heteroscedastic regression models, and log-linear models for count data with overdispersion. Some interesting ...
In order to deal with mild deviations from the assumed parametric model, we propose a procedure for ...
Plug-in estimation and corresponding refinements involving penalisation have been considered in vari...
Higher-order adjustments for a quasi-profile likelihood for a scalar parameter of interest in the pr...
In the presence of nuisance parameters, we discuss a one-parameter Bayesian analysis based on a pseu...
This article deals with the issue of using a suitable pseudo-likelihood, instead of an integrated li...
For eliminating nuisance parameters, recent literature indicates that non-Bayesian methods based on ...
Consider a sampling parametric model with parameter θ = (ψ, λ), where ψ is the parameter of interest...
Consider a model parameterized by q = (p, l), where p is the parameter of interest. The problem of e...
Effective implementation of likelihood inference in models for high-dimensional data often requires ...
In some problems of practical interest, a standard Bayesian analysis can be difficult to perform. Th...
A variety of pseudo-Bayes factors have been proposed, based on using part of the data to update an i...
In some problems of practical interest, a standard Bayesian analysis can be difficult to perform. Th...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
Inference about a parameter of interest in presence of a nuisance parameter can be based on an integ...
In certain experimental situations, the data observed are pseudo-proportional. By this, we observe t...
In order to deal with mild deviations from the assumed parametric model, we propose a procedure for ...
Plug-in estimation and corresponding refinements involving penalisation have been considered in vari...
Higher-order adjustments for a quasi-profile likelihood for a scalar parameter of interest in the pr...
In the presence of nuisance parameters, we discuss a one-parameter Bayesian analysis based on a pseu...
This article deals with the issue of using a suitable pseudo-likelihood, instead of an integrated li...
For eliminating nuisance parameters, recent literature indicates that non-Bayesian methods based on ...
Consider a sampling parametric model with parameter θ = (ψ, λ), where ψ is the parameter of interest...
Consider a model parameterized by q = (p, l), where p is the parameter of interest. The problem of e...
Effective implementation of likelihood inference in models for high-dimensional data often requires ...
In some problems of practical interest, a standard Bayesian analysis can be difficult to perform. Th...
A variety of pseudo-Bayes factors have been proposed, based on using part of the data to update an i...
In some problems of practical interest, a standard Bayesian analysis can be difficult to perform. Th...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
Inference about a parameter of interest in presence of a nuisance parameter can be based on an integ...
In certain experimental situations, the data observed are pseudo-proportional. By this, we observe t...
In order to deal with mild deviations from the assumed parametric model, we propose a procedure for ...
Plug-in estimation and corresponding refinements involving penalisation have been considered in vari...
Higher-order adjustments for a quasi-profile likelihood for a scalar parameter of interest in the pr...