Until relatively recently, the emphasis of spatial analysis was on the investigation of global models and global processes. Recent research, however, has tended to explore exceptions to general processes, and techniques have been developed which have as their focus the investigation of spatial variations in local relationships. One of these techniques, known as geographically weighted regression (GWR), developed by the authors is used here to investigate spatial variations in spatial association. The particular framework in which spatial association is examined here is the spatial autoregressive model of Ord, although the technique can easily be applied to any form of spatial autocorrelation measurement. The conceptual and theoretical found...
The paper presents spatial statistics tools in application to real estate data, including geostatist...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
In spite of literature on hedonic house price models is quite vast, much more efforts must be made ...
Until relatively recently, the emphasis of spatial analysis was on the investigation of global model...
Abstract. Until relatively recently, the emphasis of spatial analysis was on the investigation of gl...
Until relatively recently, the emphasis of spatial analysis was on the investigation of global model...
Spatial nonstationarity is a condition in which a simple ‘global” model cannot explain the relations...
Spatial nonstationarity is a condition in which a simple ‘global” model cannot explain the relations...
Spatial nonstationarity is a condition in which a simple ‘global” model cannot explain the relations...
Spatial autocorrelation is a phenomenon where the values of a variable located within certain geogra...
This dissertation research consists of five chapters with a focus on modeling spatial and temporal d...
Geographically weighted regression and the expansion method are two statistical techniques which can...
This paper provides a new model to explain local variation in apartment rents by introducing the not...
its variants are analysis methods that can cope with the multi-scale, spatially non-stationary relat...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
The paper presents spatial statistics tools in application to real estate data, including geostatist...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
In spite of literature on hedonic house price models is quite vast, much more efforts must be made ...
Until relatively recently, the emphasis of spatial analysis was on the investigation of global model...
Abstract. Until relatively recently, the emphasis of spatial analysis was on the investigation of gl...
Until relatively recently, the emphasis of spatial analysis was on the investigation of global model...
Spatial nonstationarity is a condition in which a simple ‘global” model cannot explain the relations...
Spatial nonstationarity is a condition in which a simple ‘global” model cannot explain the relations...
Spatial nonstationarity is a condition in which a simple ‘global” model cannot explain the relations...
Spatial autocorrelation is a phenomenon where the values of a variable located within certain geogra...
This dissertation research consists of five chapters with a focus on modeling spatial and temporal d...
Geographically weighted regression and the expansion method are two statistical techniques which can...
This paper provides a new model to explain local variation in apartment rents by introducing the not...
its variants are analysis methods that can cope with the multi-scale, spatially non-stationary relat...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
The paper presents spatial statistics tools in application to real estate data, including geostatist...
This contribution is an introduction to the main topics of spatial econometrics. We start analyzing ...
In spite of literature on hedonic house price models is quite vast, much more efforts must be made ...