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A Spatio - Temporal Hedonic House Regression Model

机译:一片时空燕卷房回归模型

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This work focuses on an algorithmic investigation of the housing market spanning 11 years using the hedonic pricing theory. An improved pricing model will benefit home buyers and sellers, real estate agents and appraisers, government and mortgage lenders. Hedonic pricing theory is an econometric concept that explains the market value of a differentiated commodity using implicit pricing. Exploiting the spatial dependent nature of the housing market, we created new submarkets. A model was built with the new submarket, while another one was built using the existing submarket. Random forest and LASSO were trained with the two models. We argue that our approach has a considerable impact on the dimension of a spatio-temporal hedonic house pricing model without a significant reduction in its performance.
机译:这项工作侧重于利用蜂窝定价理论跨越11年的住房市场的算法调查。改进的定价模式将受益于购房者和卖家,房地产代理和评估师,政府和抵押贷款人。 Hedonic定价理论是一个经济学概念,可以使用隐含定价解释差异化商品的市场价值。利用房地产市场的空间依赖性,我们创造了新的潜在市场。模型是用新的潜在市场构建的,而另一个模型是使用现有的潜在市场建造的。随机森林和套索接受了这两种型号培训。我们认为,我们的方法对时空储层房屋定价模型的尺寸具有相当大的影响,而不会显着降低其性能。

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