TY - JOUR
T1 - Exploring road safety through urban fabric characteristics and theory-driven prediction modeling with SEM-XGBoost
AU - McCarty, Dakota
AU - Lee, Dongwoo
AU - Park, Yunmi
AU - Kim, Hyun Woo
N1 - Publisher Copyright:
© The Author(s) 2024.
PY - 2024
Y1 - 2024
N2 - This study addresses the critical issue of road safety in urban environments, with a specific focus on the Greater London Area. Utilizing a novel, theory-driven approach, the study investigates the multifaceted impact of urban fabric factors on road safety, operationalized through a severity-weighted index of road accident frequency per capita. Through factorial analysis, six key factors (Urban Integration, Socioeconomic Challenges, Urban Amenities, Commuter Patterns, Housing and Mobility Barriers, and Major Urban Infrastructure) are identified. These factors are examined in relation to road safety using a structural equation model to uncover theoretical relationships, which inform predictive modeling with an XGBoost machine learning framework, enhanced by SHAP value analysis. Our findings reveal significant insights into the interplay between urban physical and social environments and road safety, revealing that integrated urban development strategies—encompassing improved urban integration, enhanced sustainable density, robust infrastructure development, alleviation of socioeconomic disparities, fostering of local employment, and integration of residents with transportation—are imperative for increasing road safety.
AB - This study addresses the critical issue of road safety in urban environments, with a specific focus on the Greater London Area. Utilizing a novel, theory-driven approach, the study investigates the multifaceted impact of urban fabric factors on road safety, operationalized through a severity-weighted index of road accident frequency per capita. Through factorial analysis, six key factors (Urban Integration, Socioeconomic Challenges, Urban Amenities, Commuter Patterns, Housing and Mobility Barriers, and Major Urban Infrastructure) are identified. These factors are examined in relation to road safety using a structural equation model to uncover theoretical relationships, which inform predictive modeling with an XGBoost machine learning framework, enhanced by SHAP value analysis. Our findings reveal significant insights into the interplay between urban physical and social environments and road safety, revealing that integrated urban development strategies—encompassing improved urban integration, enhanced sustainable density, robust infrastructure development, alleviation of socioeconomic disparities, fostering of local employment, and integration of residents with transportation—are imperative for increasing road safety.
KW - accident analysis
KW - factor analysis
KW - road safety
KW - structural equation modeling
KW - Urban fabric
KW - xgboost
UR - http://www.scopus.com/inward/record.url?scp=85195545884&partnerID=8YFLogxK
U2 - 10.1177/23998083241259069
DO - 10.1177/23998083241259069
M3 - Article
AN - SCOPUS:85195545884
SN - 2399-8083
JO - Environment and Planning B: Urban Analytics and City Science
JF - Environment and Planning B: Urban Analytics and City Science
ER -