Spatial Modelling and Geovisualization of House Prices in the Greater Athens Region, Greece

Q3 Social Sciences Human Geographies Pub Date : 2022-02-21 DOI:10.3390/geographies2010008
Polixeni Iliopoulou, E. Feloni
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引用次数: 1

Abstract

In this article, geovisualization is used for the presentation and interpretation of spatial analysis results concerning several house attributes. For that purpose, point data for houses in the region of Attica, Greece are analyzed. The data concern houses for sale and comprise structural characteristics, such as size, age and floor, as well as locational attributes. Geovisualization of house characteristics is performed employing spatial interpolation techniques, kriging techniques, in particular. Spatial autocorrelation in the data is examined through the calculation of the Moran’s I coefficient, while spatial clusters of houses with similar characteristics are identified using the Getis-Ord Gi* local spatial autocorrelation coefficient. Finally, a model is developed in order to predict house prices according to several structural and locational characteristics. In that respect, a classic hedonic pricing model is constructed, which is consequently developed as a geographically weighted regression (GWR) model in a GIS environment. The results of this model indicate that two characteristics, i.e., size and age, account for most of the variability in house prices in the study region. Since GWR is a local model producing different regression parameters for each observation, it is possible to obtain the spatial distribution of the regression parameters, which indicate the significance of the house characteristics for price determination in different locations in the study area.
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希腊大雅典地区房价的空间建模和地理可视化
在这篇文章中,地理可视化被用于一些房屋属性的空间分析结果的呈现和解释。为此目的,分析了希腊阿提卡地区房屋的点数据。这些数据涉及待售房屋,包括结构特征,如面积、楼龄和楼层,以及位置属性。房屋特征的地理可视化是采用空间插值技术,特别是克里格技术进行的。通过计算Moran 's I系数来检查数据中的空间自相关性,而使用Getis-Ord Gi*局部空间自相关系数来识别具有相似特征的房屋的空间集群。最后,根据几个结构和区位特征,建立了一个预测房价的模型。在这方面,构建了一个经典的享乐定价模型,从而在GIS环境中发展为地理加权回归(GWR)模型。该模型的结果表明,两个特征,即规模和年龄,是研究区域房价变化的主要原因。由于GWR是一个局部模型,每次观测产生不同的回归参数,因此可以得到回归参数的空间分布,这表明房屋特征对研究区域不同位置的价格决定具有重要意义。
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来源期刊
Human Geographies
Human Geographies Social Sciences-Geography, Planning and Development
CiteScore
1.10
自引率
0.00%
发文量
7
审稿时长
8 weeks
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