Abstract :
In this paper, we extend the GMM framework for the estimation of the mixedregressive
spatial autoregressive model by Lee (2007a) to estimate a high order
mixed-regressive spatial autoregressive model with spatial autoregressive disturbances.
Identification of such a general model is considered. The GMM approach
has computational advantage over the conventional ML method. The proposed
GMM estimators are shown to be consistent and asymptotically normal. The best
GMM estimator is derived, within the class of GMM estimators based on linear
and quadratic moment conditions of the disturbances. The best GMM estimator is
asymptotically as efficient as the ML estimator under normality, more efficient than
the QML estimator otherwise, and is efficient relative to the G2SLS estimator.