We introduce a Bayesian instrumental variable procedure with spatial random effects that handles endogeneity, and spatial dependence with unobserved heterogeneity. We find through a limited Monte Carlo experiment that our proposal works well in terms of point estimates and prediction. Then, we apply our method to analyze the welfare effects on the poorest households generated by a process of electricity tariff unification. In particular, we deduce an Equivalent Variation measure where there is a budget constraint for a two-tiered pricing scheme, and find that 10% of the poorest municipalities attained welfare gains above 2% of their initial income
We report results from a discrete choice experiment designed to assess the general publics preferenc...
We propose to model endogeneity bias using prior distributions of moment conditions. The estimator c...
Increasingly, spatial econometric methods are becoming part of the standard toolkit of applied resea...
The Supplemental Nutrition Assistance Program (SNAP) is a federal program that provides assistance t...
This paper examines the performance of small area welfare estimation. The method combines census and...
We examine the use of instrumental variable (IV) methods to measure the effect of a ceteris paribus...
This article proves the existence of a spatial correlation when considering the percentage of peopl...
A Bayesian Spatial-Propensity Score Matching estimator is proposed to measure the regional impact of...
Spatial price dispersion varies because of climatic fluctuations, marketimperfections, economic grow...
Poverty mapping can be defined as the disaggregated spatial representation (estimation) of poverty, ...
The concept of Multidimensional Poverty traditionally was used for comparative analysis across regio...
<p>This paper proposes a spatial Bayesian random effects stochastic frontier model that allows for u...
Instrumental variable (IV) methods are widely used to address endogeneity concerns. Yet, a specific ...
Este artículo comprueba la existencia de autocorrelación espacial al considerar la proporción de per...
In this study, we consider Bayesian methods for the estimation of a sample selection model with spat...
We report results from a discrete choice experiment designed to assess the general publics preferenc...
We propose to model endogeneity bias using prior distributions of moment conditions. The estimator c...
Increasingly, spatial econometric methods are becoming part of the standard toolkit of applied resea...
The Supplemental Nutrition Assistance Program (SNAP) is a federal program that provides assistance t...
This paper examines the performance of small area welfare estimation. The method combines census and...
We examine the use of instrumental variable (IV) methods to measure the effect of a ceteris paribus...
This article proves the existence of a spatial correlation when considering the percentage of peopl...
A Bayesian Spatial-Propensity Score Matching estimator is proposed to measure the regional impact of...
Spatial price dispersion varies because of climatic fluctuations, marketimperfections, economic grow...
Poverty mapping can be defined as the disaggregated spatial representation (estimation) of poverty, ...
The concept of Multidimensional Poverty traditionally was used for comparative analysis across regio...
<p>This paper proposes a spatial Bayesian random effects stochastic frontier model that allows for u...
Instrumental variable (IV) methods are widely used to address endogeneity concerns. Yet, a specific ...
Este artículo comprueba la existencia de autocorrelación espacial al considerar la proporción de per...
In this study, we consider Bayesian methods for the estimation of a sample selection model with spat...
We report results from a discrete choice experiment designed to assess the general publics preferenc...
We propose to model endogeneity bias using prior distributions of moment conditions. The estimator c...
Increasingly, spatial econometric methods are becoming part of the standard toolkit of applied resea...