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Uncovering nonlinear urban factors of homelessness: Evidence from New York City using interpretable machine learning

Shengao Yi, Wei Tu, Tianhong Zhao, Xiaojiang Li, Yatao Zhang, Donghang Li, Joseph Rodriguez and Yifei Sun

Environment and Planning B, 2026, vol. 53, issue 1, 198-227

Abstract: Urban homelessness is a complex issue rooted in structural inequalities and spatial disparities, significantly affecting urban life and well-being. Existing research often relies on survey-based or linear regression methods, which are limited in scope, coverage, and their ability to capture nonlinear associations. This study addresses these gaps by combining homeless incident reports from New York City’s 311 service with multi-source urban big data and employing a Light Gradient Boosting Machine (LightGBM) model alongside SHapley Additive Explanations (SHAP). Through a census tract-level analysis, we examine how socioeconomic, built environment, transportation, and urban landscape factors relate to homelessness incidence. Our findings show that (1) the importance of predictive factors varies across location types, for instance, information, and communication POIs are most predictive in commercial areas, while felony crime and median income dominate in residential zones; (2) socioeconomic and built environment features are consistently more important than transportation and visual landscape indicators; and (3) many factors exhibit nonlinear relationships and threshold effects, such as sharp increases in homelessness beyond a median rent of $1800 or Gini index of 0.53. These findings offer new insights into the spatial distribution and drivers of homelessness and underscore the value of interpretable machine learning in urban analytics. By identifying key environmental thresholds, this study provides evidence-based guidance for spatially targeted urban interventions, such as prioritizing support services in high-risk areas and designing inclusive public spaces that can help mitigate homelessness and promote more sustainable and equitable cities.

Keywords: Homelessness; urban big data; street view imagery; interpretable machine learning; SHapley additive explanations (search for similar items in EconPapers)
Date: 2026
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Persistent link: https://EconPapers.repec.org/RePEc:sae:envirb:v:53:y:2026:i:1:p:198-227

DOI: 10.1177/23998083251342406

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