This paper considers the most important aspects of model uncertainty for spatial regression models, namely the appropriate spatial weight matrix to be employed and the appropriate explanatory variables. We focus on the spatial Durbin model (SDM) specification in this study that nests most models used in the regional growth literature, and develop a simple Bayesian model averaging approach that provides a unified and formal treatment of these aspects of model uncertainty for SDM growth models. The approach expands on the work by LeSage and Fischer (2008) by reducing the computational costs through the use of Bayesian information criterion model weights and a matrix exponential specification of the SDM model. The spatial Durbin matrix exponen...
The spatial Durbin model (SDM) is one of the most widely used models in spatial econometrics. It ori...
Abstract Background When analysing spatial data, it is important to account for spatial autocorrelat...
International audienceThere is a great deal of literature regarding use of non-geographically based ...
This paper considers the most important aspects of model uncertainty for spatial regression models, ...
This paper considers the most important aspects of model uncertainty for spatial regression models,...
This paper uses Bayesian model comparison methods to simultaneously specify both the spatial weight...
In this paper we put forward a Bayesian Model Averaging method aimed at performing inference under ...
Several recent empirical studies, particularly in the regional economic growth literature, emphasize...
This paper investigates the adequacy of the matrix exponential spatial specifications (MESS) as an a...
In this paper we put forward a Bayesian Model Averaging method dealing with model uncertainty in the...
Abstract We attempt to clarify a number of points regarding use of spatial regression models for reg...
We develop a Bayesian approach to estimate weight matrices in spatial autoregressive (or spatial lag...
We propose a new spatio-temporal model with time-varying spatial weighting matrices, by allowing for...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
This paper investigates the adequacy of the matrix exponential spatial specifications (MESS) as an ...
The spatial Durbin model (SDM) is one of the most widely used models in spatial econometrics. It ori...
Abstract Background When analysing spatial data, it is important to account for spatial autocorrelat...
International audienceThere is a great deal of literature regarding use of non-geographically based ...
This paper considers the most important aspects of model uncertainty for spatial regression models, ...
This paper considers the most important aspects of model uncertainty for spatial regression models,...
This paper uses Bayesian model comparison methods to simultaneously specify both the spatial weight...
In this paper we put forward a Bayesian Model Averaging method aimed at performing inference under ...
Several recent empirical studies, particularly in the regional economic growth literature, emphasize...
This paper investigates the adequacy of the matrix exponential spatial specifications (MESS) as an a...
In this paper we put forward a Bayesian Model Averaging method dealing with model uncertainty in the...
Abstract We attempt to clarify a number of points regarding use of spatial regression models for reg...
We develop a Bayesian approach to estimate weight matrices in spatial autoregressive (or spatial lag...
We propose a new spatio-temporal model with time-varying spatial weighting matrices, by allowing for...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
This paper investigates the adequacy of the matrix exponential spatial specifications (MESS) as an ...
The spatial Durbin model (SDM) is one of the most widely used models in spatial econometrics. It ori...
Abstract Background When analysing spatial data, it is important to account for spatial autocorrelat...
International audienceThere is a great deal of literature regarding use of non-geographically based ...