Least squares estimation has casually been dismissed as an inconsistent estimation method for mixed regressive, spatial autoregressive models with or without spatial correlated disturbances. Although this statement is correct for a wide class of models, we show that, in economic spatial environments where each unit can be influenced aggregately by a significant portion of units in the population, least squares estimators can be consistent. Indeed, they can even be asymptotically efficient relative to some other estimators. Their computations are easier than alternative instrumental variables and maximum likelihood approaches
2020 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim Maximum likelihood estimation of the model paramet...
A focus on location and spatial interaction has recently gained a more central place not only in ap...
We develop refined inference for spatial regression models with predetermined regressors. The ordin...
Least squares estimation has casually been dismissed as an inconsistent estimation method for mixed ...
We investigate the asymptotic bias of the ordinary least squares estimator for spatial autoregressiv...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
This dissertation consists of two essays on the estimation and inference for spatial economic models...
Various two stage least squares procedures have been suggested for the estimation of the autoregress...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
We consider testing the null hypothesis of no spatial correlation against the alternative of pure fi...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
In spatial econometrics the problem of stationarity has not received much attention. Typically, the ...
We develop refined inference for spatial regression models with predetermined regressors. The ordina...
2020 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim Maximum likelihood estimation of the model paramet...
A focus on location and spatial interaction has recently gained a more central place not only in ap...
We develop refined inference for spatial regression models with predetermined regressors. The ordin...
Least squares estimation has casually been dismissed as an inconsistent estimation method for mixed ...
We investigate the asymptotic bias of the ordinary least squares estimator for spatial autoregressiv...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
This dissertation consists of two essays on the estimation and inference for spatial economic models...
Various two stage least squares procedures have been suggested for the estimation of the autoregress...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
We consider testing the null hypothesis of no spatial correlation against the alternative of pure fi...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
In spatial econometrics the problem of stationarity has not received much attention. Typically, the ...
We develop refined inference for spatial regression models with predetermined regressors. The ordina...
2020 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim Maximum likelihood estimation of the model paramet...
A focus on location and spatial interaction has recently gained a more central place not only in ap...
We develop refined inference for spatial regression models with predetermined regressors. The ordin...