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Modeling of apartment prices in a Colombian context from a machine learning approach with stable-important attributes

机译:从机器学习方法与稳定重要属性的机器学习的公寓价格建模

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The objective of this work is to develop a machine learning model for online pricing of apartments in a Colombian context.This article addresses three aspects: i) it compares the predictive capacity of linear regression, regression trees, random forest and bagging; ii) it studies the effect of a group of text attributes on the predictive capability of the models; and iii) it identifies the more stable-important attributes and interprets them from an inferential perspective to better understand the object of study.The sample consists of 15,177 observations of real estate.The methods of assembly (random forest and bagging) show predictive superiority with respect to others.The attributes derived from the text had a significant relationship with the property price (on a log scale).However, their contribution to the predictive capacity was almost nil, since four different attributes achieved highly accurate predictions and remained stable when the sample change.
机译:这项工作的目的是在哥伦比亚背景下开发一个用于在线定价的机器学习模型。这篇文章解决了三个方面:i)它比较了线性回归,回归树,随机森林和袋装的预测能力; ii)它研究了一组文本属性对模型预测能力的影响; III)它识别更稳定的重要属性,并从推断的角度解释它们以更好地理解学习的对象。该样本由15,177个房地产观察组成。组装(随机森林和袋装)的方法显示了预测的优越性尊重他人的属性与房产价格(在日志规模上)的重要关系。然而,他们对预测能力的贡献差不多,因为四个不同的属性实现了高度准确的预测,并且当时仍然保持稳定样本变化。

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