We consider cross-sectional data that exhibit no spatial correlation, but are feared to be spatially dependent. We demonstrate that a spatial version of the stochastic volatility model of financial econometrics, entailing a form of spatial autoregression, can explain such behaviour. The parameters are estimated by pseudo-Gaussian maximum likelihood based on log-transformed squares, and consistency and asymptotic normality are established. Asymptotically valid tests for spatial independence are developed
Spatial Modeling has been one of the important parts in Applied Econometrics as well as Econometrics...
We evaluate by means of Monte Carlo simulations the W-based spatial autoregressive model and the str...
Disregarding spatial dependence can invalidate methods for analyzing cross-sectional and panel data....
We consider cross-sectional data that exhibit no spatial correlation, but are feared to be spatially...
Disregarding spatial dependence can invalidate methods for analyzingcross-sectional and panel data. ...
discussions on this project. Any remaining errors are my own. Many theories in political science pre...
A focus on location and spatial interaction has recently gained a more central place not only in ap...
A simple and reliable method of inference for the spatial parameter in spatial autore-gressive model...
It has now been more than two decades since Cliff and Ord (1972) and Hordijk (1974) applied the prin...
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
DR LEO 2009-12This paper derives several Lagrange Multiplier statistics and the corresponding<br />l...
We investigate the common conjecture in applied econometric work that the inclusion of spatial fixed...
In this paper I will give a brief and general overview of the characteristics of spatial data, why i...
Spatial Modeling has been one of the important parts in Applied Econometrics as well as Econometrics...
We evaluate by means of Monte Carlo simulations the W-based spatial autoregressive model and the str...
Disregarding spatial dependence can invalidate methods for analyzing cross-sectional and panel data....
We consider cross-sectional data that exhibit no spatial correlation, but are feared to be spatially...
Disregarding spatial dependence can invalidate methods for analyzingcross-sectional and panel data. ...
discussions on this project. Any remaining errors are my own. Many theories in political science pre...
A focus on location and spatial interaction has recently gained a more central place not only in ap...
A simple and reliable method of inference for the spatial parameter in spatial autore-gressive model...
It has now been more than two decades since Cliff and Ord (1972) and Hordijk (1974) applied the prin...
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
We examine a higher-order spatial autoregressive model with stochastic, but exogenous, spatial weigh...
DR LEO 2009-12This paper derives several Lagrange Multiplier statistics and the corresponding<br />l...
We investigate the common conjecture in applied econometric work that the inclusion of spatial fixed...
In this paper I will give a brief and general overview of the characteristics of spatial data, why i...
Spatial Modeling has been one of the important parts in Applied Econometrics as well as Econometrics...
We evaluate by means of Monte Carlo simulations the W-based spatial autoregressive model and the str...
Disregarding spatial dependence can invalidate methods for analyzing cross-sectional and panel data....