Matching is a procedure aimed at reducing the impact of observational data bias in causal analysis. Designing matching methods for spatial data reflecting static spatial or dynamic spatio-temporal processes is complex because of the effects of spatial dependence and spatial heterogeneity. Both may be compounded with temporal lag in the dependency effects on the study units. Current matching techniques based on similarity indexes and pairing strategies need to be extended with optimal spatial matching procedures. Here, we propose a decision framework to support analysts through the choice of existing matching methods and anticipate the development of specialized matching methods for spatial data. This framework thus enables to identify knowl...
Many physical quantities around us vary across space or space-time. An example of a spatial quantity...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
The simplified spatial matching analysis, which collapses the bias components into four terms. (Left...
Most spatial inquiries seek to investigate causal questions about spatial processes, but many quanti...
Spatial causal inference is an emerging field of research with wide ranging areas of applications. A...
The scientific rigor and computational methods of causal inference have had great impacts on many di...
In this paper I will give a brief and general overview of the characteristics of spatial data, why i...
A spatial matching analysis, which collapses 30 conditional bias terms into five “operandum componen...
This article brings together a number of new specification search strategies in spatial econometric ...
This article brings together a number of new specification search strategies in spatial econometric ...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
This paper proposes a new spatial lag regression model which addresses global spatial autocorrelatio...
While the new economic geography of trade and location has, understandably enough, concentrated on d...
Over the past few decades, addressing "spatial confounding" has become a major topic in spatial stat...
A spatial time series dataset [15] is a collection of time series [3], each referencing a location i...
Many physical quantities around us vary across space or space-time. An example of a spatial quantity...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
The simplified spatial matching analysis, which collapses the bias components into four terms. (Left...
Most spatial inquiries seek to investigate causal questions about spatial processes, but many quanti...
Spatial causal inference is an emerging field of research with wide ranging areas of applications. A...
The scientific rigor and computational methods of causal inference have had great impacts on many di...
In this paper I will give a brief and general overview of the characteristics of spatial data, why i...
A spatial matching analysis, which collapses 30 conditional bias terms into five “operandum componen...
This article brings together a number of new specification search strategies in spatial econometric ...
This article brings together a number of new specification search strategies in spatial econometric ...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
This paper proposes a new spatial lag regression model which addresses global spatial autocorrelatio...
While the new economic geography of trade and location has, understandably enough, concentrated on d...
Over the past few decades, addressing "spatial confounding" has become a major topic in spatial stat...
A spatial time series dataset [15] is a collection of time series [3], each referencing a location i...
Many physical quantities around us vary across space or space-time. An example of a spatial quantity...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
The simplified spatial matching analysis, which collapses the bias components into four terms. (Left...