Machine-Learning-Based Prediction of Land Prices in Seoul, South Korea

The accurate estimation of real estate value helps the development of real estate policies that can respond to the complexities and instability of the real estate market. Previously, statistical methods were used to estimate real estate value, but machine learning methods have gained popularity beca...

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Veröffentlicht in:Sustainability 2021-12, Vol.13 (23), p.13088
Hauptverfasser: Kim, Jungsun, Won, Jaewoong, Kim, Hyeongsoon, Heo, Joonghyeok
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Won, Jaewoong
Kim, Hyeongsoon
Heo, Joonghyeok
description The accurate estimation of real estate value helps the development of real estate policies that can respond to the complexities and instability of the real estate market. Previously, statistical methods were used to estimate real estate value, but machine learning methods have gained popularity because their predictions are more accurate. In contrast to existing studies that use various machine learning methods to estimate the transactions or list prices of real estate properties without separating the building and land prices, this study estimates land price using a large amount of land-use information obtained from various land- and building-related datasets. The random forest and XGBoost methods were used to estimate 52,900 land prices in Seoul, South Korea, from January 2017 to December 2020. The models were also separately trained for different land uses and different time periods. Overall, the results revealed that XGBoost yields a higher prediction accuracy. Whereas the XGBoost models were more accurate on the 2020 data than on the 2017–2020 data when analyzing residential areas, the random forest models were more accurate on the 2017–2020 data than on the 2020 data. Further analysis will extend the prediction model to consider submarkets determined by price volatility and locality.
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source MDPI - Multidisciplinary Digital Publishing Institute; EZB-FREE-00999 freely available EZB journals
subjects Accuracy
Application programming interface
Artificial intelligence
Automation
Central business districts
Data collection
Housing prices
Land economics
Land use
Learning algorithms
Machine learning
Multiple listing services
Neural networks
Prediction models
Real estate
Residential areas
School districts
Statistical methods
Support vector machines
Valuation
title Machine-Learning-Based Prediction of Land Prices in Seoul, South Korea
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