We address the problem of prediction in the spatial autoregressive SAR model for areal data which is classically used in spatial econometrics. With the Kriging theory, prediction using Best Linear Unbiased Predictors is at the heart of the geostatistical literature. From the methodological point of view, we explore the limits of the extension of BLUP formulas in the context of the spatial autoregressive SAR models for out-of-sample prediction simultaneously at several sites. We propose a more tractable \almost best" alternative and clarify the relationship between the BLUP and a proper EM-algorithm predictor. From an empirical perspective, we present data-based simulations to compare the efficiency of the classical formulas with the best an...
Geostatistical estimates of a soil property by kriging are equivalent to the best linear unbiased pr...
This dissertation focuses on prediction and inference problems for complex spatiotemporal systems. I...
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...
We address the problem of prediction in the spatial autoregressive SAR model for areal data which is...
About predictions in spatial autoregressive models: optimal and almost optimal strategies. Spatial E...
We address the problem of prediction in the classical spatial autoregressive lag model for areal dat...
We address the problem of prediction in a classical spatial simultaneous au-toregressive model. The ...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
We describe a (nonparametric) prediction algorithm for spatial data, based on a canonical factorizat...
This thesis discusses two aspects of spatial statistics: sampling and prediction. In spatial statist...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
Abst ract. The problem considered is that of predicting the value of a linear functional of a random...
National audienceIn the context of localized unemployment rates in France, we study the issue of spa...
This dissertation, comprising two distinct papers, investigates the prediction and sampling of spati...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
Geostatistical estimates of a soil property by kriging are equivalent to the best linear unbiased pr...
This dissertation focuses on prediction and inference problems for complex spatiotemporal systems. I...
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...
We address the problem of prediction in the spatial autoregressive SAR model for areal data which is...
About predictions in spatial autoregressive models: optimal and almost optimal strategies. Spatial E...
We address the problem of prediction in the classical spatial autoregressive lag model for areal dat...
We address the problem of prediction in a classical spatial simultaneous au-toregressive model. The ...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
We describe a (nonparametric) prediction algorithm for spatial data, based on a canonical factorizat...
This thesis discusses two aspects of spatial statistics: sampling and prediction. In spatial statist...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
Abst ract. The problem considered is that of predicting the value of a linear functional of a random...
National audienceIn the context of localized unemployment rates in France, we study the issue of spa...
This dissertation, comprising two distinct papers, investigates the prediction and sampling of spati...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
Geostatistical estimates of a soil property by kriging are equivalent to the best linear unbiased pr...
This dissertation focuses on prediction and inference problems for complex spatiotemporal systems. I...
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...