Abstract

In cities, road traffic accidents are critical endangerment to people’s safety. A vast number of studies which are designed to understand these accidents’ leading causes and mechanisms exist. The widely held view is that emerging analysis methods can be a critical tool for understanding the complex interactions between land use and urban transportation. Using a case study of Suzhou Industrial Park (SIP) in Suzhou, China, this paper examines the relationship between different land use types and traffic accidents using a gradient boosting model (GBM) machine learning method. The results show that the GBM can be used as an effective accident model for a variety of research and analysis methods by (1) ranking the influential factors, (2) testing the degree of interpretation of each variable as the complexity of iterations changes, and (3) obtaining partial dependence plots, among other methods. The findings of this study also suggest that land use types—including facility points—demonstrate differing degrees of influence at two geographical scales: local level and neighborhood level. In the ranking of relative importance at both scales, the variables of education institutions, traffic lights, and service institutions are all ranked high—with a more significant influence on the occurrence of accidents. However, residential land and land use mix variables differed significantly in both scales and showed a significant deviation compared to the other results. When adjusting the complexity of the decision tree, the local level is more suitable for measuring variables such as residential areas and green parks where pedestrians and vehicles have fixed mobility periods and moderate flows. On the contrary, the nearest neighborhood level is more suitable to a small number of variables related to public service facilities at fixed locations, such as traffic lights and bus stops. In the partial dependence plots, all variables, except educational institutions and residences, show a positive correlation for accidents in the fitting process. The results of this study can ideally help inform transportation planners to reconsider transport accident occurrence rates in the context of the proximity to various land use types and public service facilities.

Highlights

  • Traffic safety is a crucial issue affecting the quality of urban residential life

  • As this study looks at the impact of each land use type on traffic accidents and its pattern at different spatial levels, regression- and tree-based models are selected to address the complexity of issues and factors involved in accidents. e latter involves drawing multiple trees from top to bottom through multiple terminal nodes to visually represent the detailed effects of each factor in the model in a nested manner [66]

  • In this study of the Suzhou Industrial Park (SIP), accident data provided by the SIP traffic police bureau were used to build a gradient boosting model (GBM) machine learning model to identify the relationship between traffic accidents and land use. e research process includes the following: (1) Processing the traffic accident data as well as land use and related facilities data

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Summary

Introduction

According to global statistics from the World Health Organization (WHO), around 3,700 people die per day due to road traffic collisions, and tens of millions suffer related injuries each year [1]. China has one of the highest rates of traffic accidents in the world, with more than 260 thousand fatalities annually. 10,000 people occur in China, a statistic which reflects the world average. China’s rate is higher than the rest of the Western Pacific region’s average of 16.9 deaths per every 10,000 people [2], and it only falls below Southeast Asia and Africa in the six major regions designated by the WHO (see Figure 1). Traffic accidents involve the subjective actor (the driver) and the objective environment (vehicles and roads).

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