Spatial models are used in a variety of research areas, such as environmental sciences, epidemiology, or physics. A common phenomenon in such spatial regression models is spatial confounding. This phenomenon is observed when spatially indexed covariates modeling the mean of the response are correlated with a spatial random effect included in the model, for example, as a proxy of unobserved spatial confounders. As a result, estimates for regression coefficients of the covariates can be severely biased and interpretation of these is no longer valid. Recent literature has shown that typical solutions for reducing spatial confounding can lead to misleading and counterintuitive results. In this article, we develop a computationally efficient spa...
Over the last decade, convolution-based models for spatial data have increased in popularity as a re...
The scientific rigor and computational methods of causal inference have had great impacts on many di...
Covariance modeling plays a key role in the spatial data analysis as it provides important informati...
Spatial models are used in a variety of research areas, such as environmental sciences, epidemiology...
The concept of spatial confounding is closely connected to spatial regression, although no general d...
A common phenomenon in spatial regression models is spatial confounding. This phenomenon occurs when...
Over the past few decades, addressing "spatial confounding" has become a major topic in spatial stat...
1) Species distribution models (SDMs) are currently the main tools to derive species niche estimates...
Increasingly, regression models are used when residuals are spatially correlated. Prominent examples...
If covariate and spatial effects are modeled at the same time in order to cover spatial autocorrelat...
Researchers are increasingly able to capture spatially referenced data on both a response and a cova...
Assessing associations between a response of interest and a set of covariates in spatial areal model...
The Matern family of covariance functions has played a central role in spatial statistics for decade...
Spatial causal inference is an emerging field of research with wide ranging areas of applications. A...
Spatial data with several components, such as observations of air temperature and pressure in a ce...
Over the last decade, convolution-based models for spatial data have increased in popularity as a re...
The scientific rigor and computational methods of causal inference have had great impacts on many di...
Covariance modeling plays a key role in the spatial data analysis as it provides important informati...
Spatial models are used in a variety of research areas, such as environmental sciences, epidemiology...
The concept of spatial confounding is closely connected to spatial regression, although no general d...
A common phenomenon in spatial regression models is spatial confounding. This phenomenon occurs when...
Over the past few decades, addressing "spatial confounding" has become a major topic in spatial stat...
1) Species distribution models (SDMs) are currently the main tools to derive species niche estimates...
Increasingly, regression models are used when residuals are spatially correlated. Prominent examples...
If covariate and spatial effects are modeled at the same time in order to cover spatial autocorrelat...
Researchers are increasingly able to capture spatially referenced data on both a response and a cova...
Assessing associations between a response of interest and a set of covariates in spatial areal model...
The Matern family of covariance functions has played a central role in spatial statistics for decade...
Spatial causal inference is an emerging field of research with wide ranging areas of applications. A...
Spatial data with several components, such as observations of air temperature and pressure in a ce...
Over the last decade, convolution-based models for spatial data have increased in popularity as a re...
The scientific rigor and computational methods of causal inference have had great impacts on many di...
Covariance modeling plays a key role in the spatial data analysis as it provides important informati...