This study develops a methodology of inference for a widely used Cliff-Ord type spatial model containing spatial lags in the dependent variable, exogenous variables, and the disturbance terms, while allowing for unknown heteroskedasticity in the innovations. We first generalize the GMM estimator suggested in (Kelejian and Prucha, 1998) and (Kelejian and Prucha, 1999) for the spatial autoregressive parameter in the disturbance process. We also define IV estimators for the regression parameters of the model and give results concerning the joint asymptotic distribution of those estimators and the GMM estimator. Much of the theory is kept general to cover a wide range of settings.Spatial dependence Heteroskedasticity Cliff-Ord model Two-stage l...
In this study, I investigate the necessary condition for consistency of the maximum likelihood estim...
The likelihood functions for spatial autoregressive models with normal but heteroskedastic distur-ba...
This paper discusses estimation methods for models including an endogenous spatial lag, additional e...
One important goal of this study is to develop a methodology of in-ference for a widely used Cliff-O...
One important goal of this study is to develop a methodology of in-ference for a widely used Cliff-O...
One important goal of this study is to develop a methodology of inference for a widely used Cliff-Or...
ABSTRACT. In this paper, we specify a linear Cliff-and-Ord-type spatial model. The model allows for ...
In this paper, we consider a spatial-autoregressive model with autoregressive disturbances, where we...
We consider a spatial econometric model containing a spatial lag in the dependent variable and the d...
This dissertation proposes a generalized method of moments (GMM) estimation framework for the spatia...
In this paper we consider the estimation of a panel data regression model with spatial autoregressiv...
<p>In this study, we investigate the finite sample properties of the optimal generalized method of m...
In this study, I investigate the necessary condition for the consistency of the maximum likelihood e...
In this paper, we extend the GMM framework for the estimation of the mixed-regressive spatial autore...
This paper is concerned with the estimation of the autoregressive parameter in a widely considered s...
In this study, I investigate the necessary condition for consistency of the maximum likelihood estim...
The likelihood functions for spatial autoregressive models with normal but heteroskedastic distur-ba...
This paper discusses estimation methods for models including an endogenous spatial lag, additional e...
One important goal of this study is to develop a methodology of in-ference for a widely used Cliff-O...
One important goal of this study is to develop a methodology of in-ference for a widely used Cliff-O...
One important goal of this study is to develop a methodology of inference for a widely used Cliff-Or...
ABSTRACT. In this paper, we specify a linear Cliff-and-Ord-type spatial model. The model allows for ...
In this paper, we consider a spatial-autoregressive model with autoregressive disturbances, where we...
We consider a spatial econometric model containing a spatial lag in the dependent variable and the d...
This dissertation proposes a generalized method of moments (GMM) estimation framework for the spatia...
In this paper we consider the estimation of a panel data regression model with spatial autoregressiv...
<p>In this study, we investigate the finite sample properties of the optimal generalized method of m...
In this study, I investigate the necessary condition for the consistency of the maximum likelihood e...
In this paper, we extend the GMM framework for the estimation of the mixed-regressive spatial autore...
This paper is concerned with the estimation of the autoregressive parameter in a widely considered s...
In this study, I investigate the necessary condition for consistency of the maximum likelihood estim...
The likelihood functions for spatial autoregressive models with normal but heteroskedastic distur-ba...
This paper discusses estimation methods for models including an endogenous spatial lag, additional e...