The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive model (SAR) is further investigated under a broader set-up than that in Bao and Ullah (2007a). A major difficulty in analytically evaluating the expectations of ratios of quadratic forms is overcome by a simple bootstrap procedure. With that, the corrections on bias and variance of the spatial estimator can easily be made up to third-order, and once this is done, the estimators of other model parameters become nearly unbiased. Compared with the analytical approach, the new approach is much simpler, and can easily be extended to other models of a similar structure. Extensive Monte Carlo results show that the new approach performs excellently in ...
Su and Jin (2010) develop for partially linear spatial autoregressive (PL-SAR) model a profile quasi...
The (quasi-) maximum likelihood estimator (QMLE) for the autoregres-sive parameter in a spatial auto...
Spatial autoregressive (SAR) and related models offer flexible yet parsimonious ways to model spatial...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
Maximum likelihood (ML) or quasi-maximum likelihood (QML) estimator of the spatial parameter in the ...
Motivated by a recent study of Bao and Ullah (2007a) on finite sample properties of MLE in the pure ...
Motivated by a recent study of Bao and Ullah (2007a) on finite sample properties of MLE in the pure ...
Motivated by a recent study of Bao and Ullah (2007a) on finite sample properties of MLE in the pure ...
Motivated by a recent study of Bao and Ullah (2007a) on finite sample properties of MLE in the pure ...
Explosive growth in the size of spatial databases has highlighted the need for spatial data mining t...
Explosive growth in the size of spatial databases has highlighted the need for spatial data mining t...
In spatial autoregressive models, the functional form of autocorrelation is assumed to be linear. In...
Least squares estimation has casually been dismissed as an inconsistent estimation method for mixed ...
Least squares estimation has casually been dismissed as an inconsistent estimation method for mixed ...
Abstract The (quasi-) maximum likelihood estimator (MLE) for the autoregressive parameter in a spati...
Su and Jin (2010) develop for partially linear spatial autoregressive (PL-SAR) model a profile quasi...
The (quasi-) maximum likelihood estimator (QMLE) for the autoregres-sive parameter in a spatial auto...
Spatial autoregressive (SAR) and related models offer flexible yet parsimonious ways to model spatial...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
Maximum likelihood (ML) or quasi-maximum likelihood (QML) estimator of the spatial parameter in the ...
Motivated by a recent study of Bao and Ullah (2007a) on finite sample properties of MLE in the pure ...
Motivated by a recent study of Bao and Ullah (2007a) on finite sample properties of MLE in the pure ...
Motivated by a recent study of Bao and Ullah (2007a) on finite sample properties of MLE in the pure ...
Motivated by a recent study of Bao and Ullah (2007a) on finite sample properties of MLE in the pure ...
Explosive growth in the size of spatial databases has highlighted the need for spatial data mining t...
Explosive growth in the size of spatial databases has highlighted the need for spatial data mining t...
In spatial autoregressive models, the functional form of autocorrelation is assumed to be linear. In...
Least squares estimation has casually been dismissed as an inconsistent estimation method for mixed ...
Least squares estimation has casually been dismissed as an inconsistent estimation method for mixed ...
Abstract The (quasi-) maximum likelihood estimator (MLE) for the autoregressive parameter in a spati...
Su and Jin (2010) develop for partially linear spatial autoregressive (PL-SAR) model a profile quasi...
The (quasi-) maximum likelihood estimator (QMLE) for the autoregres-sive parameter in a spatial auto...
Spatial autoregressive (SAR) and related models offer flexible yet parsimonious ways to model spatial...