AbstractThis paper develops consistency and asymptotic normality of parameter estimates for a higher-order spatial autoregressive model whose order, and number of regressors, are allowed to approach infinity slowly with sample size. Both least squares and instrumental variables estimates are examined, and the permissible rate of growth of the dimension of the parameter space relative to sample size is studied. Besides allowing the number of parameters to increase with the data, this has the advantage of accommodating some asymptotic regimes that are suggested by certain spatial settings, several of which are discussed. A small empirical example is also included, and a Monte Carlo study analyses various implications of the theory in finite s...
This paper develops an estimator for higher-order spatial autoregressive panel data error component ...
The quasi-maximum likelihood estimator for the autoregressive parameter in a spatial autoregression...
This dissertation consists of five chapters. In Chapter 1, we collect some fundamental concepts and ...
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...
Pseudo maximum likelihood estimates are developed for higher-order spatial autoregressive models wit...
We develop refined inference for spatial regression models with predetermined regressors. The ordin...
Pseudo maximum likelihood estimates are developed for higher-order spatial autoregres- sive models w...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
This paper presents a fundamentally improved statement on asymptotic behaviour of the well-known Gau...
We develop refined inference for spatial regression models with predetermined regressors. The ordina...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
Higher-order spatial econometric models that include more than one weights matrix have seen increasi...
This paper develops an estimator for higher-order spatial autoregressive panel data error component ...
The quasi-maximum likelihood estimator for the autoregressive parameter in a spatial autoregression...
This dissertation consists of five chapters. In Chapter 1, we collect some fundamental concepts and ...
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...
Pseudo maximum likelihood estimates are developed for higher-order spatial autoregressive models wit...
We develop refined inference for spatial regression models with predetermined regressors. The ordin...
Pseudo maximum likelihood estimates are developed for higher-order spatial autoregres- sive models w...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
This paper presents a fundamentally improved statement on asymptotic behaviour of the well-known Gau...
We develop refined inference for spatial regression models with predetermined regressors. The ordina...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
Higher-order spatial econometric models that include more than one weights matrix have seen increasi...
This paper develops an estimator for higher-order spatial autoregressive panel data error component ...
The quasi-maximum likelihood estimator for the autoregressive parameter in a spatial autoregression...
This dissertation consists of five chapters. In Chapter 1, we collect some fundamental concepts and ...