Maximum likelihood (ML) estimation of spatial autoregressive models for large spatial data sets is well established by making use of the commonly sparse nature of the contiguity matrix on which spatial dependence is built. Adding a measurement error that naturally separates the spatial process from the measurement error process are not well established in the literature, however, and ML estimation of such models to large data sets is challenging. Recently a reduced rank approach was suggested which re-expresses and approximates such a model as a spatial random effects model (SRE) in order to achieve fast fitting of large data sets by fitting the corresponding SRE. In this paper we propose a fast and exact method to accomplish ML estimation ...
This paper considers a hierarchically spatial autoregressive and moving average error (HSEARMA) mode...
AbstractWe consider one-step estimation of parameters that represent the strength of spatial depende...
This paper discusses estimation methods for models including an endogenous spatial lag, additional e...
In this dissertation we investigate a possible attempt to combine the Data Mining methods and tradit...
Spatial autocorrelation (more generally, spatial dependence) occurs when a regression's error term a...
The SAR model is widely used in spatial econometrics to model Gaussian processes on a discrete spati...
The SAR model is widely used in spatial econometrics to model Gaussian processes on a discrete spati...
The SAR model is widely used in spatial econometrics to model Gaussian processes on a discrete spati...
The purpose of this dissertation is to improve the applied researcher's toolbox to estimate spatial ...
1I describe maximum likelihood estimation of panel models incorporating: random effects and spatial ...
The random field model has been applied to model spatial heterogeneity for spatial data in many appl...
1It is described a procedure for maximum likelihood estimation of panel models incorporating: random...
A simple and reliable method of inference for the spatial parameter in spatial autore-gressive model...
Explosive growth in the size of spatial databases has highlighted the need for spatial data mining t...
Spatial econometrics is currently experiencing the Big Data revolution both in terms of the volume o...
This paper considers a hierarchically spatial autoregressive and moving average error (HSEARMA) mode...
AbstractWe consider one-step estimation of parameters that represent the strength of spatial depende...
This paper discusses estimation methods for models including an endogenous spatial lag, additional e...
In this dissertation we investigate a possible attempt to combine the Data Mining methods and tradit...
Spatial autocorrelation (more generally, spatial dependence) occurs when a regression's error term a...
The SAR model is widely used in spatial econometrics to model Gaussian processes on a discrete spati...
The SAR model is widely used in spatial econometrics to model Gaussian processes on a discrete spati...
The SAR model is widely used in spatial econometrics to model Gaussian processes on a discrete spati...
The purpose of this dissertation is to improve the applied researcher's toolbox to estimate spatial ...
1I describe maximum likelihood estimation of panel models incorporating: random effects and spatial ...
The random field model has been applied to model spatial heterogeneity for spatial data in many appl...
1It is described a procedure for maximum likelihood estimation of panel models incorporating: random...
A simple and reliable method of inference for the spatial parameter in spatial autore-gressive model...
Explosive growth in the size of spatial databases has highlighted the need for spatial data mining t...
Spatial econometrics is currently experiencing the Big Data revolution both in terms of the volume o...
This paper considers a hierarchically spatial autoregressive and moving average error (HSEARMA) mode...
AbstractWe consider one-step estimation of parameters that represent the strength of spatial depende...
This paper discusses estimation methods for models including an endogenous spatial lag, additional e...