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Machine learning with explainability or spatial hedonics tools? An analysis of the asking prices in the housing market in Alicante, Spain

机译:机器学习用解释性或空间HEDONICS工具?西班牙阿利坎特住房市场的价格分析

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Two sets of modelling tools are used to evaluate the precision of housing-price forecasts: machine learning and hedonic regression. Evidences on the prediction capacity of a range of methods points to the superiority of the random forest as it can calculate real-estate values with an error of less than 2%. This method also ranks the attributes that are most relevant to determining housing prices. Hedonic regression models are less precise but more robust as they can identify the housing attributes that most affect the level of housing prices. This empirical exercise adds new knowledge to the literature as it investigates the capacity of the random forest to identify the three dimensions of non-linearity which, from an economic theoretical point of view, would identify the reactions of different market agents. The intention of the robustness test is to check for these non-linear relationships using hedonic regression. The quantile tools also highlight non-linearities, depending on the price levels. The results show that a combination of techniques would add information on the unobservable (nonlinear) relationships between housing prices and housing attributes on the real-estate market.
机译:两套建模工具用于评估住房价格预测的精度:机器学习和蜂窝回归。关于一系列方法的预测能力证据指向随机森林的优越性,因为它可以计算出误差小于2%的房地产值。该方法还将与确定房价相关最相关的属性。蜂鸟回归模型的精确性较低,但更强大,因为它们可以识别大部分影响房价水平的住房属性。该实证练习为文献增加了新知识,因为它调查了随机森林的能力来确定非线性的三个维度,从经济理论的观点来看,这将确定不同市场代理的反应。鲁棒性测试的目的是使用诸如宿舍的回归来检查这些非线性关系。分位式工具还突出显示非线性,具体取决于价格水平。结果表明,技术的组合将增加关于房价与房地产市场之间的不可观察(非线性)关系的信息。

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