<p>In this study, we investigate the finite sample properties of the optimal generalized method of moments estimator (OGMME) for a spatial econometric model with a first-order spatial autoregressive process in the dependent variable and the disturbance term (for short SARAR(1, 1)). We show that the estimated asymptotic standard errors for spatial autoregressive parameters can be substantially smaller than their empirical counterparts. Hence, we extend the finite sample variance correction methodology of Windmeijer (<a href="#CIT0033" target="_blank">2005</a>) to the OGMME for the SARAR(1, 1) model. Results from simulation studies indicate that the correction method improves the variance estimates in small samples and leads to more accurate ...
This paper suggests an improved GMM estimator for the autoregressive parameter of a spatial autoregr...
This paper develops an estimator for higher-order spatial autoregressive panel data error component ...
This dissertation proposes a generalized method of moments (GMM) estimation framework for the spatia...
This study develops a methodology of inference for a widely used Cliff-Ord type spatial model contai...
This paper is concerned with the estimation of the autoregressive parameter in a widely considered s...
We consider a spatial econometric model containing a spatial lag in the dependent variable and the d...
In this paper, we consider a spatial-autoregressive model with autoregressive disturbances, where we...
One important goal of this study is to develop a methodology of in-ference for a widely used Cliff-O...
In the presence of heteroskedasticity, conventional test statistics based on the ordinary least squa...
Using approximations of the score of the log-likelihood function, we derive moment conditions for es...
This paper undertakes a Monte Carlo study to compare MLE-based and GMM-based tests regarding the spa...
This paper considers linear models with a spatial autoregressive error structure. Extending Arnold ...
One important goal of this study is to develop a methodology of inference for a widely used Cliff-Or...
In this paper, we extend the GMM framework for the estimation of the mixed-regressive spatial autore...
This paper considers a hierarchically spatial autoregressive and moving average error (HSEARMA) mode...
This paper suggests an improved GMM estimator for the autoregressive parameter of a spatial autoregr...
This paper develops an estimator for higher-order spatial autoregressive panel data error component ...
This dissertation proposes a generalized method of moments (GMM) estimation framework for the spatia...
This study develops a methodology of inference for a widely used Cliff-Ord type spatial model contai...
This paper is concerned with the estimation of the autoregressive parameter in a widely considered s...
We consider a spatial econometric model containing a spatial lag in the dependent variable and the d...
In this paper, we consider a spatial-autoregressive model with autoregressive disturbances, where we...
One important goal of this study is to develop a methodology of in-ference for a widely used Cliff-O...
In the presence of heteroskedasticity, conventional test statistics based on the ordinary least squa...
Using approximations of the score of the log-likelihood function, we derive moment conditions for es...
This paper undertakes a Monte Carlo study to compare MLE-based and GMM-based tests regarding the spa...
This paper considers linear models with a spatial autoregressive error structure. Extending Arnold ...
One important goal of this study is to develop a methodology of inference for a widely used Cliff-Or...
In this paper, we extend the GMM framework for the estimation of the mixed-regressive spatial autore...
This paper considers a hierarchically spatial autoregressive and moving average error (HSEARMA) mode...
This paper suggests an improved GMM estimator for the autoregressive parameter of a spatial autoregr...
This paper develops an estimator for higher-order spatial autoregressive panel data error component ...
This dissertation proposes a generalized method of moments (GMM) estimation framework for the spatia...