Comparing econometric analyses with machine learning approaches: a study on Singapore private property market
We aim to compare econometric analyses with machine learning approaches in the context of Singapore private property market using transaction data covering the period of 1995-2018. A hedonic model is employed to quantify the premiums of important attributes and amenities, with a focus on the premium...
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sg-ntu-dr.10356-1550872022-02-11T06:32:36Z Comparing econometric analyses with machine learning approaches: a study on Singapore private property market Bian, Tingbin Chen, Jin Feng, Qu Li, Jingyi School of Social Sciences Social sciences::Economic development Singapore Property Price Hedonic Model We aim to compare econometric analyses with machine learning approaches in the context of Singapore private property market using transaction data covering the period of 1995-2018. A hedonic model is employed to quantify the premiums of important attributes and amenities, with a focus on the premium of distance to nearest Mass Rapid Transit (MRT) stations. In the meantime, an investigation using machine learning algorithms under three categories-LASSO, random forest and artificial neural networks is conducted in the same context with deeper insights on importance of determinants of property prices. The results suggest that the MRT distance premium is significant and moving 100m closer from the mean distance point to the nearest MRT station would increase the overall transacted price by about 15,000 Singapore dollars (SGD). Machine learning approaches generally achieve higher prediction accuracy and heterogeneous property age premium is suggested by LASSO. Using random forest algorithm, we find that property prices are mostly affected by key macroeconomic factors, such as the time of sale, as well as the size and floor level of property. Finally, an appraisal on different approaches is provided for researchers to utilize additional data sources and data-driven approaches to exploit potential causal effects in economic studies. Ministry of Education (MOE) Financial support from the MOE AcRF Tier1 Grant M4012113 at Nanyang Technological University is gratefully acknowledged. 2022-02-11T06:32:36Z 2022-02-11T06:32:36Z 2020 Journal Article Bian, T., Chen, J., Feng, Q. & Li, J. (2020). Comparing econometric analyses with machine learning approaches: a study on Singapore private property market. Singapore Economic Review, 1-24. https://dx.doi.org/10.1142/S0217590820500538 0217-5908 https://hdl.handle.net/10356/155087 10.1142/S0217590820500538 2-s2.0-85092785730 1 24 en M4012113 Singapore Economic Review © 2020 World Scientific Publishing Company. All rights reserved. |
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Social sciences::Economic development Singapore Property Price Hedonic Model Bian, Tingbin Chen, Jin Feng, Qu Li, Jingyi Comparing econometric analyses with machine learning approaches: a study on Singapore private property market |
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We aim to compare econometric analyses with machine learning approaches in the context of Singapore private property market using transaction data covering the period of 1995-2018. A hedonic model is employed to quantify the premiums of important attributes and amenities, with a focus on the premium of distance to nearest Mass Rapid Transit (MRT) stations. In the meantime, an investigation using machine learning algorithms under three categories-LASSO, random forest and artificial neural networks is conducted in the same context with deeper insights on importance of determinants of property prices. The results suggest that the MRT distance premium is significant and moving 100m closer from the mean distance point to the nearest MRT station would increase the overall transacted price by about 15,000 Singapore dollars (SGD). Machine learning approaches generally achieve higher prediction accuracy and heterogeneous property age premium is suggested by LASSO. Using random forest algorithm, we find that property prices are mostly affected by key macroeconomic factors, such as the time of sale, as well as the size and floor level of property. Finally, an appraisal on different approaches is provided for researchers to utilize additional data sources and data-driven approaches to exploit potential causal effects in economic studies. |
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School of Social Sciences |
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School of Social Sciences Bian, Tingbin Chen, Jin Feng, Qu Li, Jingyi |
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Article |
author |
Bian, Tingbin Chen, Jin Feng, Qu Li, Jingyi |
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Bian, Tingbin |
title |
Comparing econometric analyses with machine learning approaches: a study on Singapore private property market |
title_short |
Comparing econometric analyses with machine learning approaches: a study on Singapore private property market |
title_full |
Comparing econometric analyses with machine learning approaches: a study on Singapore private property market |
title_fullStr |
Comparing econometric analyses with machine learning approaches: a study on Singapore private property market |
title_full_unstemmed |
Comparing econometric analyses with machine learning approaches: a study on Singapore private property market |
title_sort |
comparing econometric analyses with machine learning approaches: a study on singapore private property market |
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2022 |
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https://hdl.handle.net/10356/155087 |
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1724626848615235584 |