Published June 2025
| Version v1
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Assessing the Predictive Power of Urban Green Spaces in Machine Learning Models for Chicago Housing Prices
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Description
Urban Green Space (UGS) plays an important role in the urban environment. This study compares the predictive power of two types of UGS measurements — park proximity and NDVI — in the machine learning models to predict housing prices in Chicago. By incorporating real estate big data, GIS analysis, and Machine Learning techniques, the result indicates NDVI is a strong predictor for single-family residential properties on the fringe of the urban core.
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Thesis_Kuang_Sheng.pdf
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- Other
- oai:uchicago.tind.io:15435