TY - JOUR
T1 - A Robust Geographically Optimal Zones-based heterogeneity model for analyzing the spatial determinants of national traffic accidents
AU - Luo, Hongyi
AU - Luo, Peng
AU - Meng, Liqiu
N1 - Publisher Copyright:
© 2025 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.
PY - 2025
Y1 - 2025
N2 - Revealing the factors associated with traffic accident risk across cities nationwide, including demographic and economic elements, is crucial for supporting traffic safety policy, urban planning, and insurance evaluation. Spatial stratified heterogeneity models, such as Geographically Optimized Zone-based Heterogeneity (GOZH) model, are widely used for analyzing the spatial association in large scale. However, as their spatial discretization process heavily depends on a manually set complexity parameter (cp), introducing significant uncertainty. To address this, we developed a Robust GOZH (RGOZH), by analyzing the inter-parameter relationships within GOZH and introducing the Q function as an optimization function to achieve precise and controlled geographic partitioning. By selecting the optimal cp, RGOZH produces the most reliable spatial partitioning results. Testing RGOZH on Germany’s traffic accident dataset revealed strong geographic patterns, with RGOZH achieving superior spatial groupings while maintaining over 80% of explanatory power–a stark contrast to the less interpretable results from GOZH. RGOZH identified vehicle ownership, government employee proportion, and income level as primary factors shaping traffic accident risk. This study highlights the critical role of large-scale spatial pattern analysis in traffic management and establishes RGOZH as a robust framework for future interdisciplinary geospatial research. Furthermore, RGOZH provides a replicable method that can adapt to various regional datasets, enhancing its utility in international traffic safety studies. As a methodological advancement, RGOZH demonstrates the value of integrating optimized spatial parameters into predictive geospatial models.
AB - Revealing the factors associated with traffic accident risk across cities nationwide, including demographic and economic elements, is crucial for supporting traffic safety policy, urban planning, and insurance evaluation. Spatial stratified heterogeneity models, such as Geographically Optimized Zone-based Heterogeneity (GOZH) model, are widely used for analyzing the spatial association in large scale. However, as their spatial discretization process heavily depends on a manually set complexity parameter (cp), introducing significant uncertainty. To address this, we developed a Robust GOZH (RGOZH), by analyzing the inter-parameter relationships within GOZH and introducing the Q function as an optimization function to achieve precise and controlled geographic partitioning. By selecting the optimal cp, RGOZH produces the most reliable spatial partitioning results. Testing RGOZH on Germany’s traffic accident dataset revealed strong geographic patterns, with RGOZH achieving superior spatial groupings while maintaining over 80% of explanatory power–a stark contrast to the less interpretable results from GOZH. RGOZH identified vehicle ownership, government employee proportion, and income level as primary factors shaping traffic accident risk. This study highlights the critical role of large-scale spatial pattern analysis in traffic management and establishes RGOZH as a robust framework for future interdisciplinary geospatial research. Furthermore, RGOZH provides a replicable method that can adapt to various regional datasets, enhancing its utility in international traffic safety studies. As a methodological advancement, RGOZH demonstrates the value of integrating optimized spatial parameters into predictive geospatial models.
KW - GOZH
KW - spatial association
KW - Spatial stratified heterogeneity
KW - traffic accidents
UR - http://www.scopus.com/inward/record.url?scp=85214010041&partnerID=8YFLogxK
U2 - 10.1080/15481603.2024.2448283
DO - 10.1080/15481603.2024.2448283
M3 - Article
AN - SCOPUS:85214010041
SN - 1548-1603
VL - 62
JO - GIScience and Remote Sensing
JF - GIScience and Remote Sensing
IS - 1
M1 - 2448283
ER -