The aim of this paper is to evaluate the spatial and hierarchical models for data generating processes with spatial heterogeneity and spatial dependence at the higher level. The simulation for the m-SAR and HSAR models was used to discuss the consequences of spatial misspecification. We noticed that the misspecification of spatial homogeneity or heterogeneity in both models affects i.a. the estimated parameter for spatial interactions at the individual level. Applying a m-SAR model for spatially heterogeneous processes causes the overestimation of the spatial interaction parameter.Artykuł ma na celu przetestowanie modelu przestrzennego i hierarchicznego, przeznaczonych do analiz procesów przestrzennych cechujących się przestrzenną heterogen...
In this study, I investigate the necessary condition for the consistency of the maximum likelihood e...
The SAR model is widely used in spatial econometrics to model Gaussian processes on a discrete spati...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
The aim of this paper is to evaluate the spatial and hierarchical models for data generating process...
This study presents some remarks on procedure for space-time process investigation by the use of mu...
Statistic and econometric analyses of spatial phenomena use the data of different levels...
In this paper I will give a brief and general overview of the characteristics of spatial data, why i...
The main purpose of the article is to consider a important issue of spatial econometrics, which is a...
We evaluate by means of Monte Carlo simulations the W-based spatial autoregressive model and the str...
We evaluate by means of Monte Carlo simulations the W-based spatial autoregressive model and the str...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
The objective of this paper is to advance in the discussion of the topic of heterogeneity in a spati...
Our paper focuses on the case of SUR models with spatial effects. Specifically, the problem that we...
Spatial econometric methods aim at taking into account the two special characteristics of spatial da...
Spatial autoregressive (SAR) and related models offer flexible yet parsimonious ways to model spatial...
In this study, I investigate the necessary condition for the consistency of the maximum likelihood e...
The SAR model is widely used in spatial econometrics to model Gaussian processes on a discrete spati...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
The aim of this paper is to evaluate the spatial and hierarchical models for data generating process...
This study presents some remarks on procedure for space-time process investigation by the use of mu...
Statistic and econometric analyses of spatial phenomena use the data of different levels...
In this paper I will give a brief and general overview of the characteristics of spatial data, why i...
The main purpose of the article is to consider a important issue of spatial econometrics, which is a...
We evaluate by means of Monte Carlo simulations the W-based spatial autoregressive model and the str...
We evaluate by means of Monte Carlo simulations the W-based spatial autoregressive model and the str...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
The objective of this paper is to advance in the discussion of the topic of heterogeneity in a spati...
Our paper focuses on the case of SUR models with spatial effects. Specifically, the problem that we...
Spatial econometric methods aim at taking into account the two special characteristics of spatial da...
Spatial autoregressive (SAR) and related models offer flexible yet parsimonious ways to model spatial...
In this study, I investigate the necessary condition for the consistency of the maximum likelihood e...
The SAR model is widely used in spatial econometrics to model Gaussian processes on a discrete spati...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...