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Open AccessArticle
Machine Learning Applications for Sustainable Housing Policy: Understanding Price Determinants to Inform Affordable Housing Strategies
by
Fan Zhang
Fan Zhang 1
,
Yifang Luo
Yifang Luo 1,
Yuqing Dong
Yuqing Dong 2,
Qikai Zhang
Qikai Zhang 1 and
Aihua Han
Aihua Han 2,*
1
State Key Laboratory of Ocean Sensing & Ocean College, Zhejiang University, Zhoushan 316021, China
2
School of Statistics and Mathematics, Zhongnan University of Economics and Law, 182 Nanhu Avenue, Wuhan 430073, China
*
Author to whom correspondence should be addressed.
Algorithms 2026, 19(2), 98; https://doi.org/10.3390/a19020098 (registering DOI)
Submission received: 9 December 2025
/
Revised: 20 January 2026
/
Accepted: 21 January 2026
/
Published: 26 January 2026
Abstract
Understanding how housing attributes are capitalized into prices is central to addressing urban affordability challenges. Using 2799 second-hand housing transactions from Wenzhou, China, this study examines residential price formation under pronounced spatial and structural heterogeneity. Multiple predictive models are evaluated within a unified 10-fold cross-validation framework. Results indicate that Random Forest delivers the strongest predictive performance, achieving a normalized mean squared error below 0.10 and explaining over 90% of out-of-sample price variation, substantially outperforming hedonic regression, regression trees, bagging, boosting, and support vector models. Permutation-based importance analysis identifies district location, building scale, and floor area as the dominant price determinants, while the influence of renovation quality, transportation access, and educational amenities varies across districts and dwelling types. These findings reveal strong nonlinearities and heterogeneous valuation mechanisms in rapidly urbanizing housing markets. Methodologically, the study demonstrates how interpretable machine learning complements traditional hedonic analysis, while providing policy-relevant insights into housing affordability dynamics in medium-sized Chinese cities.
Share and Cite
MDPI and ACS Style
Zhang, F.; Luo, Y.; Dong, Y.; Zhang, Q.; Han, A.
Machine Learning Applications for Sustainable Housing Policy: Understanding Price Determinants to Inform Affordable Housing Strategies. Algorithms 2026, 19, 98.
https://doi.org/10.3390/a19020098
AMA Style
Zhang F, Luo Y, Dong Y, Zhang Q, Han A.
Machine Learning Applications for Sustainable Housing Policy: Understanding Price Determinants to Inform Affordable Housing Strategies. Algorithms. 2026; 19(2):98.
https://doi.org/10.3390/a19020098
Chicago/Turabian Style
Zhang, Fan, Yifang Luo, Yuqing Dong, Qikai Zhang, and Aihua Han.
2026. "Machine Learning Applications for Sustainable Housing Policy: Understanding Price Determinants to Inform Affordable Housing Strategies" Algorithms 19, no. 2: 98.
https://doi.org/10.3390/a19020098
APA Style
Zhang, F., Luo, Y., Dong, Y., Zhang, Q., & Han, A.
(2026). Machine Learning Applications for Sustainable Housing Policy: Understanding Price Determinants to Inform Affordable Housing Strategies. Algorithms, 19(2), 98.
https://doi.org/10.3390/a19020098
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