The goal of this paper is to provide a cohesive description and a critical comparison of the main estimators proposed in the literature for spatial binary choice models. The properties of such estimators are investigated using a theoretical and simulation study, followed by an empirical application. To the authors' knowledge, this is the first paper that provides a comprehensive Monte Carlo study of the estimators' properties. This simulation study shows that the Gibbs estimator performs best for low spatial autocorrelation, while the recursive importance sampler performs best for high spatial autocorrelation. The same results are obtained by increasing the sample size. Finally, the linearized general method of moments estimator is the fast...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
The consequences of spatial effects on discrete choice models have not been well established. Variou...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
Binary outcome models are frequently used in the social sciences and economics. However, such models...
This paper proposes a semiparametric estimator for spatial autoregressive (SAR) binary choice models...
A random walk Metropolis-Hastings algorithm has been widely used in sampling the parameter of spatia...
Spatial econometric specifications pose unique computational challenges to Bayesian analysis, making...
Abstract: This paper considers spatial autoregressive (SAR) binary choice models in the context of p...
Despite the huge availability of software to estimate cross-sectional spatial models, there are only...
This dissertation consists of two essays on the estimation and inference for spatial economic models...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
In spatial discrete choice models the spatial dependent structure adds complexity in the estimation ...
We evaluate by means of Monte Carlo simulations the W-based spatial autoregressive model and the str...
We evaluate by means of Monte Carlo simulations the W-based spatial autoregressive model and the str...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
The consequences of spatial effects on discrete choice models have not been well established. Variou...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
Binary outcome models are frequently used in the social sciences and economics. However, such models...
This paper proposes a semiparametric estimator for spatial autoregressive (SAR) binary choice models...
A random walk Metropolis-Hastings algorithm has been widely used in sampling the parameter of spatia...
Spatial econometric specifications pose unique computational challenges to Bayesian analysis, making...
Abstract: This paper considers spatial autoregressive (SAR) binary choice models in the context of p...
Despite the huge availability of software to estimate cross-sectional spatial models, there are only...
This dissertation consists of two essays on the estimation and inference for spatial economic models...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
In spatial discrete choice models the spatial dependent structure adds complexity in the estimation ...
We evaluate by means of Monte Carlo simulations the W-based spatial autoregressive model and the str...
We evaluate by means of Monte Carlo simulations the W-based spatial autoregressive model and the str...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
The consequences of spatial effects on discrete choice models have not been well established. Variou...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...