The scientific rigor and computational methods of causal inference have had great impacts on many disciplines but have only recently begun to take hold in spatial applications. Spatial causal inference poses analytic challenges due to complex correlation structures and interference between the treatment at one location and the outcomes at others. In this paper, we review the current literature on spatial causal inference and identify areas of future work. We first discuss methods that exploit spatial structure to account for unmeasured confounding variables. We then discuss causal analysis in the presence of spatial interference including several common assumptions used to reduce the complexity of the interference patterns under considerati...
abstract: A major challenge in health-related policy and program evaluation research is attributing ...
Statistical methods are often used habitually, perhaps without sufficient reflection on their robust...
In social sciences, data structures are often hierarchical. When these data also arise in spatial se...
Spatial causal inference is an emerging field of research with wide ranging areas of applications. A...
Environmental epidemiologists are increasingly interested in establishing causality between exposure...
Most spatial inquiries seek to investigate causal questions about spatial processes, but many quanti...
Many events and policies (treatments) occur at specific spatial locations, with researchers interest...
Climate change has been identified as one the main public health challenges of this century and quan...
Over the past few decades, addressing "spatial confounding" has become a major topic in spatial stat...
We consider design-based causal inference in settings where randomized treatments have effects that ...
Spatial statistical analyses are often used to study the link between environmental factors and the ...
Many causal processes have spatial and temporal dimensions. Yet the classic causal inference framewo...
Estimating the causal effects of a spatially-varying intervention on a spatially-varying outcome may...
In epidemiologic studies, researchers are commonly interested in quantifying geospatial effects on t...
The concept of spatial confounding is closely connected to spatial regression, although no general d...
abstract: A major challenge in health-related policy and program evaluation research is attributing ...
Statistical methods are often used habitually, perhaps without sufficient reflection on their robust...
In social sciences, data structures are often hierarchical. When these data also arise in spatial se...
Spatial causal inference is an emerging field of research with wide ranging areas of applications. A...
Environmental epidemiologists are increasingly interested in establishing causality between exposure...
Most spatial inquiries seek to investigate causal questions about spatial processes, but many quanti...
Many events and policies (treatments) occur at specific spatial locations, with researchers interest...
Climate change has been identified as one the main public health challenges of this century and quan...
Over the past few decades, addressing "spatial confounding" has become a major topic in spatial stat...
We consider design-based causal inference in settings where randomized treatments have effects that ...
Spatial statistical analyses are often used to study the link between environmental factors and the ...
Many causal processes have spatial and temporal dimensions. Yet the classic causal inference framewo...
Estimating the causal effects of a spatially-varying intervention on a spatially-varying outcome may...
In epidemiologic studies, researchers are commonly interested in quantifying geospatial effects on t...
The concept of spatial confounding is closely connected to spatial regression, although no general d...
abstract: A major challenge in health-related policy and program evaluation research is attributing ...
Statistical methods are often used habitually, perhaps without sufficient reflection on their robust...
In social sciences, data structures are often hierarchical. When these data also arise in spatial se...