This paper compares the performance of Bayesian variable selection approaches for spatial autoregressive models. We present two alternative approaches which can be implemented using Gibbs sampling methods in a straightforward way and allow us to deal with the problem of model uncertainty in spatial autoregressive models in a flexible and computationally efficient way. In a simulation study we show that the variable selection approaches tend to outperform existing Bayesian model averaging techniques both in terms of in-sample predictive performance and computational efficiency.Series: Department of Economics Working Paper Serie
Spatial data analysis has become more and more important in the studies of ecology and economics dur...
A health outcome can be observed at a spatial location and we wish to relate this to a set of enviro...
The goal of this paper is to provide a cohesive description and a critical comparison of the main es...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
Abstract: The problem of variable selection is encountered in model fitting with unobserved spatial ...
In this study, we consider Bayesian methods for the estimation of a sample selection model with spat...
This thesis first describes the general idea behind Bayes Inference, various sampling methods based ...
This paper develops methods for automatic selection of variables in forecasting Bayesian vector auto...
Spatial econometric specifications pose unique computational challenges to Bayesian analysis, making...
Several recent empirical studies, particularly in the regional economic growth literature, emphasize...
In this paper, a Bayesian variable selection method for spatial autoregressive (SAR) quantile models...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
Heteroscedasticity is often encountered in spatial-data analysis, so a new class of heterogeneous sp...
Abstract. Despite the abundance of methods for variable selection and ac-commodating spatial structu...
A random walk Metropolis-Hastings algorithm has been widely used in sampling the parameter of spatia...
Spatial data analysis has become more and more important in the studies of ecology and economics dur...
A health outcome can be observed at a spatial location and we wish to relate this to a set of enviro...
The goal of this paper is to provide a cohesive description and a critical comparison of the main es...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
Abstract: The problem of variable selection is encountered in model fitting with unobserved spatial ...
In this study, we consider Bayesian methods for the estimation of a sample selection model with spat...
This thesis first describes the general idea behind Bayes Inference, various sampling methods based ...
This paper develops methods for automatic selection of variables in forecasting Bayesian vector auto...
Spatial econometric specifications pose unique computational challenges to Bayesian analysis, making...
Several recent empirical studies, particularly in the regional economic growth literature, emphasize...
In this paper, a Bayesian variable selection method for spatial autoregressive (SAR) quantile models...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
Heteroscedasticity is often encountered in spatial-data analysis, so a new class of heterogeneous sp...
Abstract. Despite the abundance of methods for variable selection and ac-commodating spatial structu...
A random walk Metropolis-Hastings algorithm has been widely used in sampling the parameter of spatia...
Spatial data analysis has become more and more important in the studies of ecology and economics dur...
A health outcome can be observed at a spatial location and we wish to relate this to a set of enviro...
The goal of this paper is to provide a cohesive description and a critical comparison of the main es...