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Geographically Weighted Regression Model (GWR) Based Spatial Analysis of House Price in Shenzhen

机译:深圳房价基于地理加权回归模型(GWR)空间分析

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Through applying spatial statistical analysis, Geographical Weighted Regression (GWR) model and GIS technology, this study aims at finding the relationship between the effects of various factors and spatial distribution of residential house price. The traditional regression models are reviewed firstly, the model without the consideration of spatial characteristics cannot reach very nice precision to simulate the spatial distribution of the house price. In this study, the spatial statistical model, coupled with GIS as well as GWR model, is developed. The proposed model is validated using the house price data in Shenzhen, China, when considering these factors such as the land price, transportation, the distance to the commercial center, the distance to hospital, school, the house type, the brand of the house etc. It is demonstrated that our approach provides an effective model to present the distribution of the residential house price and serve as a tool for house price appraisal during the property tax levy process.
机译:通过应用空间统计分析,地理加权回归(GWR)模型和GIS技术,该研究旨在找到各种因素与住宅价格的空间分布之间的关系。首先审查了传统的回归模型,该模型不考虑空间特性无法达到非常好的精度来模拟房价的空间分布。在该研究中,开发了与GIS以及GWR模型相结合的空间统计模型。拟议的模型使用中国深圳的房价数据进行验证,在考虑这些因素,如土地价格,运输,到商业中心的距离,到医院,学校,房子类型,众议院的品牌结果证明,我们的方法提供了一个有效的模型,以呈现住宅价格的分布,并作为房产税收过程中的房价评估工具。

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