空间依赖与享乐性住房回归模型

T. Oladunni, Sharad Sharma
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引用次数: 4

摘要

房地产的位置对其评估价值有相当大的影响。考虑地理信息消除了享乐住房回归模型精度中的一些可减少的误差。改善的表现将使购房者、卖家、政府和房地产专业人士受益。本文利用互信息(MI)和方差膨胀因子(VIF)研究了享乐住宅回归模型中子市场属性和地理空间属性的空间依赖性和可替代性。建立了最佳子集线性回归和回归树预测模型作为学习算法。贝叶斯信息准则(BIC)和残差平均偏差(RDM)分别衡量线性回归和回归树的性能。线性回归模型的BIC分别在14个变量和11个变量下最适合子市场和地理空间模型。子市场树共包含9个参数,共包含15个终端节点;地理空间树共包含7个参数,共包含13个终端节点。虽然地理空间模型比子市场模型有轻微的优势,但实验表明模型具有可替代性。该数据集包括2006年1月至12月期间8个县的单户住宅,提取自Multiple Listing Service存储库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial Dependency and Hedonic Housing Regression Model
The location of a real estate property has a considerable impact on its appraised value. Accounting for geograph-ical information eliminates some reducible errors in the accuracy of a hedonic housing regression model. An im-proved performance will benefit home buyers, sellers, government and real estate professionals. This paper investigates the spatial dependency and substitutability of submarket and geospatial attributes in a hedonic housing regression model using mutual information (MI) and variance inflation factor (VIF). Best subset linear regression and regression tree predictive models were built as learning algorithms. Bayesian Information Criterion (BIC) and Residual Mean Deviance (RDM) measured the performance of the linear regression and regression trees respectively. The BIC of the linear regression model indicated a best fit at 14 and 11 variables for submarket and geospatial models respectively. Optimization of the submarket tree was attained with 9 parameters comprising of 15 terminal nodes, while 7 parameters comprising of 13 terminal nodes achieved optimization in the geospa-tial tree. While geospatial models have a slight edge over the submarket model, the experiment suggested the substi-tutability of the models. The dataset consisted of single family's homes in 8 counties between January and De-cember 2006 extracted from the Multiple Listing Service repository.
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