Exploring Nonlinear Threshold Effects and Interactions Between Built Environment and Urban Vitality at the Block Level Using Machine Learning
Urban vitality is a critical indicator of both urban sustainability and quality of life. However, comprehensive studies examining the threshold effects and interaction mechanisms of built environment factors on urban vitality at the block level remain limited. This study proposed to develop a compre...
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MDPI AG
2025-06-01
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| Series: | Land |
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| Online Access: | https://www.mdpi.com/2073-445X/14/6/1232 |
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| author | Cong Li Yajuan Zhou Manfei Wu Jiayue Xu Xin Fu |
| author_facet | Cong Li Yajuan Zhou Manfei Wu Jiayue Xu Xin Fu |
| author_sort | Cong Li |
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| description | Urban vitality is a critical indicator of both urban sustainability and quality of life. However, comprehensive studies examining the threshold effects and interaction mechanisms of built environment factors on urban vitality at the block level remain limited. This study proposed to develop a comprehensive framework for urban vitality by incorporating multi-source data, and the central urban area of Xi’an, China, was selected as the study area. Four machine learning models, LightGBM, XGBoost, GBDT, and random forest, were employed to identify the most fitted model for analyzing threshold effects and interactions among built environment factors on shaping urban vitality. The results showed the following: (1) Xi’an’s urban vitality exhibited a distinct gradient, with the highest vitality concentrated in the Yanta District; (2) life service facility density was the most significant determinant of vitality (19.91%), followed by air quality (9.01%) and functional diversity (6.49%); and (3) significant interactions among built environment factors were observed. In particular, streets characterized by both high POI diversity (greater than 0.8) and low PM<sub>2.5</sub> concentrations (below 48.5 μg/m<sup>3</sup>) exhibited notably enhanced vitality scores. The findings of this study provide key insights into strategies for boosting urban vitality, offering actionable insights for improving land use allocations and enhancing quality of life. |
| format | Article |
| id | doaj-art-2ee2f4ae019d4d358fa8d5873e84b486 |
| institution | OA Journals |
| issn | 2073-445X |
| language | English |
| publishDate | 2025-06-01 |
| publisher | MDPI AG |
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| series | Land |
| spelling | doaj-art-2ee2f4ae019d4d358fa8d5873e84b4862025-08-20T02:20:58ZengMDPI AGLand2073-445X2025-06-01146123210.3390/land14061232Exploring Nonlinear Threshold Effects and Interactions Between Built Environment and Urban Vitality at the Block Level Using Machine LearningCong Li0Yajuan Zhou1Manfei Wu2Jiayue Xu3Xin Fu4College of Landscape Architecture and Arts, Northwest A&F University, Yangling 712100, ChinaCollege of Landscape Architecture and Arts, Northwest A&F University, Yangling 712100, ChinaCollege of Landscape Architecture and Arts, Northwest A&F University, Yangling 712100, ChinaCollege of Landscape Architecture and Arts, Northwest A&F University, Yangling 712100, ChinaCollege of Landscape Architecture and Arts, Northwest A&F University, Yangling 712100, ChinaUrban vitality is a critical indicator of both urban sustainability and quality of life. However, comprehensive studies examining the threshold effects and interaction mechanisms of built environment factors on urban vitality at the block level remain limited. This study proposed to develop a comprehensive framework for urban vitality by incorporating multi-source data, and the central urban area of Xi’an, China, was selected as the study area. Four machine learning models, LightGBM, XGBoost, GBDT, and random forest, were employed to identify the most fitted model for analyzing threshold effects and interactions among built environment factors on shaping urban vitality. The results showed the following: (1) Xi’an’s urban vitality exhibited a distinct gradient, with the highest vitality concentrated in the Yanta District; (2) life service facility density was the most significant determinant of vitality (19.91%), followed by air quality (9.01%) and functional diversity (6.49%); and (3) significant interactions among built environment factors were observed. In particular, streets characterized by both high POI diversity (greater than 0.8) and low PM<sub>2.5</sub> concentrations (below 48.5 μg/m<sup>3</sup>) exhibited notably enhanced vitality scores. The findings of this study provide key insights into strategies for boosting urban vitality, offering actionable insights for improving land use allocations and enhancing quality of life.https://www.mdpi.com/2073-445X/14/6/1232urban vitalitybuilt environmentmachine learningthreshold effectssynergistic interactions |
| spellingShingle | Cong Li Yajuan Zhou Manfei Wu Jiayue Xu Xin Fu Exploring Nonlinear Threshold Effects and Interactions Between Built Environment and Urban Vitality at the Block Level Using Machine Learning Land urban vitality built environment machine learning threshold effects synergistic interactions |
| title | Exploring Nonlinear Threshold Effects and Interactions Between Built Environment and Urban Vitality at the Block Level Using Machine Learning |
| title_full | Exploring Nonlinear Threshold Effects and Interactions Between Built Environment and Urban Vitality at the Block Level Using Machine Learning |
| title_fullStr | Exploring Nonlinear Threshold Effects and Interactions Between Built Environment and Urban Vitality at the Block Level Using Machine Learning |
| title_full_unstemmed | Exploring Nonlinear Threshold Effects and Interactions Between Built Environment and Urban Vitality at the Block Level Using Machine Learning |
| title_short | Exploring Nonlinear Threshold Effects and Interactions Between Built Environment and Urban Vitality at the Block Level Using Machine Learning |
| title_sort | exploring nonlinear threshold effects and interactions between built environment and urban vitality at the block level using machine learning |
| topic | urban vitality built environment machine learning threshold effects synergistic interactions |
| url | https://www.mdpi.com/2073-445X/14/6/1232 |
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