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Modelling house prices using multilevel structured additive regression

机译:使用多层结构化加性回归建模房价

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This paper analyzes house price data belonging to three hierarchical levels of spatial units. House selling prices with associated individual attributes (the elementary level-1) are grouped within municipalities (level-2), which form districts (level-3), which are themselves nested in counties (level-4). Additionally to individual attributes, explanatory covariates with possibly nonlinear effects are available on two of these spatial resolutions.We apply a multilevel version of structured additive regression(STAR) models to regress house prices on individual attributes and locational neighbourhood characteristics in a four-level hierarchical model. In multilevel STAR models the regression coefficients of a particular nonlinear term may themselves obey a regression model with structured additive predictor. The framework thus allows to incorporate nonlinear covariate effects and time trends, smooth spatial effects and complex interactions at every level of the hierarchy of the multilevel model. Moreover, we are able to decompose the spatial heterogeneity effect and investigate its magnitude at different spatial resolutions allowing for improved predictive quality even in the case of unobserved spatial units. Statistical inference is fully Bayesian and based on highly efficient Markov chain Monte Carlo simulation techniques that take advantage of the hierarchical structure in the data.
机译:本文分析了属于空间单元的三个层次级别的房价数据。具有相关个人属性的房屋销售价格(基本级别1)在市镇(级别2)中分组,这些市镇构成了地区(级别3),而这些地区又嵌套在县(级别4)中。除了单个属性外,在其中两个空间分辨率上还提供了可能带有非线性效应的解释协变量。我们应用结构化加性回归(STAR)模型的多层版本,以四层层次结构对单个属性和位置邻里特征进行房价回归模型。在多级STAR模型中,特定非线性项的回归系数本身可以服从具有结构化加性预测变量的回归模型。因此,该框架允许在多级模型层次结构的每个级别上合并非线性协变量效应和时间趋势,平滑的空间效应以及复杂的交互作用。此外,我们能够分解空间异质性效应,并在不同的空间分辨率下研究其大小,即使在未观察到空间单位的情况下,也可以提高预测质量。统计推断完全是贝叶斯方法,并基于高效的马尔可夫链蒙特卡洛模拟技术,该技术利用了数据的层次结构。

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