Caio Flávio Martinez Fontoura Júnior, Marlene Saleti Uberti, V. M. Tachibana
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引用次数: 1
Abstract
Housing Market appraisal studies generally apply classic regression models, whose parameters are globally estimated. However, the use of the Geographically Weighted Regression (GWR) model, allows the parameters to be locally estimated, increasing its precision. The aim of this article is to apply the GWR model to a sample of 82 apartments, in order to create a plan of values of some districts of the West Zone of Rio de Janeiro city, Brazil. With the proposed methodology, GWR and kernel estimator, it is possible to generate a surface of values. The performance of the surface of values was assessed with (i) cross-validation between the kernel functions, with the Root-Mean Square Standardized (RMSS) error; and with (ii) the GWR adjustment factors to determine the ideal bandwidth. The contribution of generating a surface of values with geographical location via kernel estimator lies on supporting apartment pricing, such as in calculating the venal value of apartments of the West Zone of Rio de Janeiro city, besides being applied in IPTU- Imposto sobre Propriedade Predial e Territorial (The Urban Real Estate Property Tax) and ITBI - Imposto de Transmissao de Bens Imoveis (Tax on the Transfer of Real Estate) and ITBI collection.
房地产市场评估研究一般采用经典的回归模型,其参数是全局估计的。然而,使用地理加权回归(GWR)模型,允许参数局部估计,提高其精度。本文的目的是将GWR模型应用到82套公寓的样本中,以创建巴西里约热内卢市西区某些地区的价值规划。利用所提出的方法、GWR和核估计器,可以生成一个值的表面。通过(i)核函数之间的交叉验证,使用均方根标准化(RMSS)误差来评估值表面的性能;并与(ii) GWR调整因子确定理想带宽。通过核估计器生成具有地理位置的价值表面的贡献在于支持公寓定价,例如计算里约热内卢市西区公寓的贪污价值,此外还应用于IPTU- Imposto sobre Propriedade Predial e Territorial(城市房地产财产税)和ITBI - Imposto de Transmissao de Bens Imoveis(房地产转让税)和ITBI征收。
期刊介绍:
The Boletim de Ciências Geodésicas publishes original papers in the area of Geodetic Sciences and correlated ones (Geodesy, Photogrammetry and Remote Sensing, Cartography and Geographic Information Systems).
Submitted articles must be unpublished, and should not be under consideration for publication in any other journal. Previous publication of the paper in conference proceedings would not violate the originality requirements. Articles must be written preferably in English language.