Spatial autoregressive models typically rely on the assumption that the spatial dependence structure is known in advance and is represented by a deterministic spatial weights matrix, although it is unknown in most empirical applications. Thus, we investigate the estimation of sparse spatial dependence structures for regular lattice data. In particular, an adaptive least absolute shrinkage and selection operator (lasso) is used to select and estimate the individual nonzero connections of the spatial weights matrix. To recover the spatial dependence structure, we propose cross-sectional resampling, assuming that the random process is exchangeable. The estimation procedure is based on a two-step approach to circumvent simultaneity issues that ...
Spatial autocorrelation (more generally, spatial dependence) occurs when a regression's error term a...
A focus on location and spatial interaction has recently gained a more central place not only in ap...
We examine some aspects of estimating sample autocovariances for spatial processes. Especially, we n...
Spatial econometric research typically relies on the assumption that the spatial dependence structur...
We propose a technique for estimating the spatial weights matrix (SWM) of the spatial autoregressive...
In this article, we propose a two-stage LASSO estimation approach for the estimation of a full spati...
Spatial econometric models allow for interactions among variables through the specification of a spa...
Spatial econometric models allow for interactions among variables through the specification of a spa...
In spatial econometrics, we usually assume that the spatial dependence structure is known and that a...
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...
International audienceSpatial regression models rely on simultaneous autoregressive processes that m...
Disregarding spatial dependence can invalidate methods for analyzingcross-sectional and panel data. ...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
We consider cross-sectional data that exhibit no spatial correlation, but are feared to be spatially...
Spatial autocorrelation (more generally, spatial dependence) occurs when a regression's error term a...
A focus on location and spatial interaction has recently gained a more central place not only in ap...
We examine some aspects of estimating sample autocovariances for spatial processes. Especially, we n...
Spatial econometric research typically relies on the assumption that the spatial dependence structur...
We propose a technique for estimating the spatial weights matrix (SWM) of the spatial autoregressive...
In this article, we propose a two-stage LASSO estimation approach for the estimation of a full spati...
Spatial econometric models allow for interactions among variables through the specification of a spa...
Spatial econometric models allow for interactions among variables through the specification of a spa...
In spatial econometrics, we usually assume that the spatial dependence structure is known and that a...
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...
International audienceSpatial regression models rely on simultaneous autoregressive processes that m...
Disregarding spatial dependence can invalidate methods for analyzingcross-sectional and panel data. ...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
We consider cross-sectional data that exhibit no spatial correlation, but are feared to be spatially...
Spatial autocorrelation (more generally, spatial dependence) occurs when a regression's error term a...
A focus on location and spatial interaction has recently gained a more central place not only in ap...
We examine some aspects of estimating sample autocovariances for spatial processes. Especially, we n...