he predictive likelihood is of particular relevance in a Bayesian setting when the purpose is to rank models in a forecast comparison exercise. This paper discusses how the predictive likelihood can be estimated for any subset of the observable variables in linear Gaussian state-space models with Bayesian methods, and proposes to utilize a missing observations consistent Kalman filter in the process of achieving this objective. As an empirical application, we analyze euro area data and compare the density forecast performance of a DSGE model to DSGE-VARs and reduced-form linear Gaussian models
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...
Advanced Bayesian methods are employed in estimating dynamic stochastic general equilibrium (DSGE) m...
We formulate approximate Bayesian inference in non-conjugate temporal and spatio-temporal Gaussian p...
Summary: In a Bayesian setting, the predictive likelihood is of particular relevance when the object...
Abstract: This paper shows how to compute the h-step-ahead predictive likelihood for any subset of t...
International audienceSmoothers are increasingly used in geophysics. Several linear gaussian algorit...
2008 We propose a new result that simplifies the evaluation of the marginal likelihood in Gaussian S...
The purpose of this chapter is to provide a comprehensive treatment of likelihood inference for stat...
We provide a comprehensive overview and tooling for GP modelling with non-Gaussian likelihoods using...
Abstract. This paper analyzes the forecasting performance of an open economy DSGE model, estimated w...
The likelihood function of a general non-linear, non-Gaussian state space model is a high-dimensiona...
The Bayes factor is a widely used criterion in model comparison and its logarithm is a difference of...
This paper investigates the performance of the predictive distributions of Bayesian models. To overc...
In this article we consider the problem of prediction for a general class of Gaussian models, which ...
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...
Advanced Bayesian methods are employed in estimating dynamic stochastic general equilibrium (DSGE) m...
We formulate approximate Bayesian inference in non-conjugate temporal and spatio-temporal Gaussian p...
Summary: In a Bayesian setting, the predictive likelihood is of particular relevance when the object...
Abstract: This paper shows how to compute the h-step-ahead predictive likelihood for any subset of t...
International audienceSmoothers are increasingly used in geophysics. Several linear gaussian algorit...
2008 We propose a new result that simplifies the evaluation of the marginal likelihood in Gaussian S...
The purpose of this chapter is to provide a comprehensive treatment of likelihood inference for stat...
We provide a comprehensive overview and tooling for GP modelling with non-Gaussian likelihoods using...
Abstract. This paper analyzes the forecasting performance of an open economy DSGE model, estimated w...
The likelihood function of a general non-linear, non-Gaussian state space model is a high-dimensiona...
The Bayes factor is a widely used criterion in model comparison and its logarithm is a difference of...
This paper investigates the performance of the predictive distributions of Bayesian models. To overc...
In this article we consider the problem of prediction for a general class of Gaussian models, which ...
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...
Advanced Bayesian methods are employed in estimating dynamic stochastic general equilibrium (DSGE) m...
We formulate approximate Bayesian inference in non-conjugate temporal and spatio-temporal Gaussian p...