We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weight matrices. Allowing a general spatial linear process form for the disturbances that permits many common types of error specifications as well as potential 'long memory', we provide sufficient conditions for consistency and asymptotic normality of instrumental variables and ordinary least squares estimates. The implications of popular weight matrix normalizations and structures for our theoretical conditions are discussed. A set of Monte Carlo simulations examines the behaviour of the estimates in a variety of situations and suggests, like the theory, that spatial weights generated from distributions with ?smaller? moments yield better estima...
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 ...
A focus on location and spatial interaction has recently gained a more central place not only in ap...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
This paper develops consistency and asymptotic normality of parameter estimates for a higher-order s...
This paper develops consistency and asymptotic normality of parameter estimates for a higher-order s...
This paper develops consistency and asymptotic normality of parameter estimates for a higher-order s...
This paper develops consistency and asymptotic normality of parameter estimates for a higher-order s...
AbstractThis paper develops consistency and asymptotic normality of parameter estimates for a higher...
We develop refined inference for spatial regression models with predetermined regressors. The ordin...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
We propose a new spatio-temporal model with time-varying spatial weighting matrices, by allowing for...
We develop a Bayesian approach to estimate weight matrices in spatial autoregressive (or spatial lag...
This paper develops an estimator for higher-order spatial autoregressive panel data error component ...
This paper considers linear models with a spatial autoregressive error structure. Extending Arnold ...
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 ...
A focus on location and spatial interaction has recently gained a more central place not only in ap...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
This paper develops consistency and asymptotic normality of parameter estimates for a higher-order s...
This paper develops consistency and asymptotic normality of parameter estimates for a higher-order s...
This paper develops consistency and asymptotic normality of parameter estimates for a higher-order s...
This paper develops consistency and asymptotic normality of parameter estimates for a higher-order s...
AbstractThis paper develops consistency and asymptotic normality of parameter estimates for a higher...
We develop refined inference for spatial regression models with predetermined regressors. The ordin...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
We propose a new spatio-temporal model with time-varying spatial weighting matrices, by allowing for...
We develop a Bayesian approach to estimate weight matrices in spatial autoregressive (or spatial lag...
This paper develops an estimator for higher-order spatial autoregressive panel data error component ...
This paper considers linear models with a spatial autoregressive error structure. Extending Arnold ...
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 ...
A focus on location and spatial interaction has recently gained a more central place not only in ap...