首页> 外文期刊>International Journal of Strategic Property Management >A HOUSE PRICE VALUATION BASED ON THE RANDOM FOREST APPROACH: THE MASS APPRAISAL OF RESIDENTIAL PROPERTY IN SOUTH KOREA
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A HOUSE PRICE VALUATION BASED ON THE RANDOM FOREST APPROACH: THE MASS APPRAISAL OF RESIDENTIAL PROPERTY IN SOUTH KOREA

机译:基于随机森林方法的房屋价格估值:韩国居住产权的大规模评价

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Mass appraisal is the standardized procedure of valuing a large number of properties at the same time and is commonly used to compute real estate tax. While a hedonic pricing model based on the ordinary least squares (OLS) linear regression has been employed as the traditional method in this process, the stability and accuracy of the model remain questionable. This paper investigates the features of a house price predictor based on the Random Forest (RF) method by comparing it with that of a conventional hedonic pricing model. We used apartment transaction data from the period of 2006 to 2017 in the district of Gangnam, one of the most developed areas in South Korea. Using a data set covering 40% of all transactions in the sample area, we demonstrate that the accuracy of a machine learning-based predictor can be surprisingly high. The average of percentage deviations between the predicted and the actual market price was found to be only around 5.5% in the RF predictor, whereas it was almost 20% in the OLS-based predictor. With the RF predictor, the probability of the predicted price being within 5% of its actual market price was 72%, while only about 17.5% of the regression-based predictions fell within the same range. These results show that, in the practice of mass appraisal, the RF method may be a useful complement to the hedonic models, as it snore adequately captures the complexity or non-linearity of actual housing markets.
机译:大规模评估是在同一时间重估大量物业的标准化程序,通常用于计算房地产税。虽然基于普通最小二乘(OLS)线性回归的储层定价模型作为在该过程中的传统方法中,模型的稳定性和准确性仍然可疑。本文通过将随机森林(RF)方法与传统的Hedonic定价模型进行比较来调查房价预测原的特征。我们在康南地区2006年至2017年使用了公寓交易数据,是韩国最发达地区之一。使用涵盖示例区域中所有交易的40%的数据集,我们证明了基于机器的预测器的准确性可能令人惊讶地高。预测和实际市场价格之间的偏差百分比的平均值仅为射频预测器中的约5.5%,而基于OLS的预测指标近20%。通过RF预测因子,预测价格的概率在其实际市场价格的5%范围内为72%,而基于回归的预测的约17.5%在同一范围内下降。这些结果表明,在大规模评估的实践中,RF方法可能是对杂草模型的有用补充,因为它充分地捕获了实际壳体市场的复杂性或非线性。

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