4.2. Spatiotemporal Heterogeneity Analysis of Impact Factors
4.2.1. Temporal Heterogeneity Analysis of Impact Factors
Based on the regression results of the GTWR model, in order to further reveal the temporal heterogeneity of the factors influencing traffic accidents, this paper drew boxplots of the fitted coefficients of each influencing factor from 2009 to 2021, as shown in
Figure 2. These boxplots illustrated the contribution coefficients of each factor to traffic accidents from 2009 to 2021.
(1) From 2009 to 2021, the regression coefficient of population size of decreasing initially and increasing gradually, the average regression coefficient first decreased from 0.195 in 2009 to 0.141 in 2015, then grew to 0.312 in 2021, indicating significant temporal variation. Additionally, there was considerable variability in the dispersion across different years, confirming the temporal heterogeneity of population size. However, overall, population size showed a positive effect on traffic accidents. This is because provinces with larger populations typically have more traffic activities, including vehicles, pedestrians, and other participants, thereby increasing the probability of traffic accidents.
(2) From 2009 to 2021, the regression coefficients of economic level were both positive and negative, experiencing the process of positive to negative and decreasing year by year, from 0.165 in 2009 to −0.169 in 2021 specifically, of which there was a positive correlation from 2009 to 2015 and a negative correlation from 2015 onwards, with obvious differences. Additionally, there was considerable variability in dispersion across the years from 2009 to 2021, confirming the temporal heterogeneity of economic level. The improvement of economic level is often associated with an increase in people’s education level and social quality, leading to greater adherence to traffic rules by drivers. Moreover, governments typically allocate more resources to improve transportation infrastructure, which may contribute to reducing the occurrence of traffic accidents.
(3) From 2009 to 2021, the average regression coefficient of motorization level underwent a process of being initially negative and then positive, first decreasing and then increasing, with the significant exhibition of temporal heterogeneity. The average regression coefficient slightly decreased from −0.017 to −0.049 from 2009 to 2011 and then increased from −0.027 to 0.526 from 2012 to 2021. Additionally, there was considerable variability in dispersion across the years from 2009 to 2021, confirming the temporal heterogeneity of motorization level. The increase in motorization level leads to an increase in traffic volume, highlighting issues such as traffic congestion, and possibly putting significant pressure on transportation infrastructure, thereby increasing the occurrence rate of traffic accidents.
(4) The impact of highway mileage on traffic accidents showed relatively stable changes from 2009 to 2021, with the average regression coefficient being positive. However, there was considerable variability in dispersion across different years, indicating the temporal heterogeneity of road mileage. An increase in highway mileage results in longer distances traveled by vehicles, thereby increasing the risk of accidents. It also encourages more vehicles to travel on roads, thereby increasing traffic volume and consequently, the probability of accidents.
(5) From 2009 to 2021, the average regression coefficient of the unemployment rate showed both positive and negative distributions, with a small decrease from 2009 to 2016 from 0.025 to −0.072, and an increase from 2017 to 2021 from −0.065 to 0.021, with temporal heterogeneity. Additionally, from the perspective of dispersion, it confirmed temporal heterogeneity. This is because an increase in the unemployment rate implies a decrease in commuting numbers and driving frequency, which may lead to a reduction in traffic accidents.
(6) Similar to highway mileage, the average regression coefficient for passenger trips was essentially positive over the study period, and the positive effect increased and then decreased over time, with the average regression coefficient increasing from 0.306 in 2009 to 0.433 in 2014 before decreasing to 0.080 in 2021, with significant temporal variability. Additionally, from the perspective of dispersion, the impact varies across provinces. An increase in passenger volume implied more passenger vehicles, passenger numbers and longer operating times, which may increase the incidence rate of traffic accidents. However, with the improvement of traffic safety awareness and traffic management level, some of the increased risks of traffic accidents resulting from the increase in passenger volume may be mitigated.
4.2.2. Spatial Heterogeneity Analysis of Influencing Factors
According to the natural breakpoint grading principle in ArcGIS 10.2, the average regression coefficients of each province from 2009 to 2021 were calculated. The spatial distribution map of the influencing factors is plotted in
Figure 3.
(1) The regression coefficients of population size cover a wide range, distributed between −0.029 and 0.639, showing significant spatial heterogeneity. Provinces with negative regression coefficients are mainly located in the East China region. This may be due to stricter traffic management, better traffic facilities, and higher traffic civilization in densely populated areas, thereby reducing the occurrence of traffic accidents.
(2) The impact of economic level on traffic accidents did not exhibit consistent positive or negative correlations. The distribution of regression coefficients covers a wide range, distributed between −0.069 and 0.407, indicating spatial heterogeneity. Provinces with negative coefficients are mainly located in North China and Northwest China. North China has higher levels of traffic planning, road construction, and traffic law enforcement, which contribute to the reduction of traffic accidents and improved road safety. However, the traffic infrastructure and safety facilities in Northwest China, once economically lagging behind the other regions, are relatively backward. With economic development, investments in traffic infrastructure and safety facilities are increasing to alleviate traffic pressure and reduce the incidence of traffic accidents.
(3) The spatial heterogeneity of the regression coefficients of motorization level was evident, distributed between −0.281 and 0.267. There were relatively higher regression coefficients in provinces in North China and Northeast China, ranging from above 0.129 to below 0.267. In North China, although there is good infrastructure construction and traffic management, an increase in motorization levels still leads to increased traffic flow and pressure, thereby increasing the probability of traffic accidents. In Northeast China, adverse weather conditions (snow, sandstorms, and haze) often increase the risk of road travel, potentially increasing the probability of driving errors and hazardous driving actions, making accidents more likely to occur [
39].
(4) Highway mileage had a positive impact on traffic accidents, especially in the Southwest, Central, and South China regions, with regression coefficients reaching above 0.524 and below 0.570. These southern regions have diverse geographical environments, with mountains in Southwest China, relatively flat terrain in Central China, and hills, plains, and coastal areas in South China. As highway mileage increases, the distance traveled by vehicles increases, leading to increased traffic flow and the risk of accidents. Particularly in mountainous and plateau areas, terrain and climate conditions limit drivers’ visibility and operations, further increasing the risk of traffic accidents.
(5) The regression coefficients of unemployment rates varied in different provinces, ranging from −0.032 to 0.111, with a high positive correlation observed in Central China and South China. In economically developed regions like South China, high unemployment rates often have a significant impact on people’s mental health [
40], causing them to be more susceptible to fatigue, anxiety, distraction, and even errors in judgment while driving, which in turn significantly increases the risk of traffic accidents. In Central China, located in the convergence zone of the middle and lower reaches of the Yellow River and the middle reaches of the Yangtze River, with a relatively complete industrial system, an increase in unemployment rates may lead to more people seeking livelihoods, thereby increasing travel demands and the probability of traffic accidents.
(6) The regression coefficients of passenger volume in each province were positive, with high values mainly concentrated in Central China and East China, and relatively high values distributed in North China and South China. These regions are located within the area east of the “Hu Line”, which is densely populated and industrialized, with higher demands for passenger transportation. An increase in passenger volume leads to more passengers, vehicles, and longer operating times, thereby increasing the risk of traffic accidents. The widespread distribution of regression coefficients for passenger volume confirmed the significant spatial heterogeneity of this explanatory variable.
4.2.3. Managerial Implications
Given the vast geographical, social, economic, and cultural differences among provinces, a one-size-fits-all approach to traffic safety evaluation is insufficient. This study offers significant insights for policymakers in addressing the complex issue of traffic safety across China’s diverse provinces.
Firstly, the study reveals the temporal and spatial law of the impact of macro indicators such as highway mileage, population, motorization level, passenger volume, economic level, and unemployment rate on traffic accidents. For example, the effect of economic level on traffic accidents was positive from 2009 to 2015, but has gradually turned negative since 2015, indicating that its effect is not static. This finding provides a reference for the economic development of other countries or regions in different stages of development and helps to clarify the key weights of macro indicators on the impact of traffic accidents in different stages of economic development.
Secondly, in a country as vast as China, the complexity of traffic safety issues increases as a result of the different geographical, social, economic, and cultural environments in different provinces. Evaluating traffic safety solely on the basis of the number of road traffic accidents is insufficient and lacks scientific validity. Therefore, decision makers need to take a more nuanced approach and select evaluation indicators that are universally applicable and objective. It provides a basis for decision makers to develop area-specific strategies.
Finally, given the complex and varied factors affecting traffic accidents in the specific process of management and construction, we should comprehensively consider the relevance of macro indicators and take corresponding preventive measures. For example, when carrying out road construction, we should not only pay attention to the potential impact of road mileage on traffic accidents, but also combine factors such as population and economy, and improve public safety awareness through government propaganda and other means to reduce the possibility of accidents during construction. This predictive management method can effectively reduce potential risks and improve the overall level of traffic safety.
4.2.4. Limitations and Future Directions
Although some progress has been made in this study, its limitations should not be overlooked. Firstly, the current research has not elucidated the underlying mechanisms as to how influencing factors such as population size, economic level, motorization level, highway mileage, unemployment rate, and passenger volume interact with each other to affect traffic accidents. Therefore, future research will employ principal component analysis to extract more influencing factors and analyze the comprehensive effects among different factors. Secondly, the current study mainly focuses on the macro-scale traffic safety level of provincial regions, with insufficient attention to micro-level details. Future research could further refine the analysis of the spatial regions of cities or counties to reveal the differences in traffic safety among regions and their underlying reasons more specifically. Lastly, future research should expand to different analytical models, such as nonlinear models, to reveal the complex relationships between traffic accidents and influencing factors more deeply.