Back to Search
Start Over
Predicting Risky and Aggressive Driving Behavior among Taxi Drivers: Do Spatio-Temporal Attributes Matter?
- Source :
- International Journal of Environmental Research and Public Health, Volume 17, Issue 11, International Journal of Environmental Research and Public Health, Vol 17, Iss 3937, p 3937 (2020)
- Publication Year :
- 2020
-
Abstract
- Risky and aggressive driving maneuvers are considered a significant indicator for traffic accident occurrence as well as they aggravate their severity. Traffic violations caused by such uncivilized driving behavior is a global issue. Studies in existing literature have used statistical analysis methods to explore key contributing factors toward aggressive driving and traffic violations. However, such methods are unable to capture latent correlations among predictor variables, and they also suffer from low prediction accuracies. This study aimed to comprehensively investigate different traffic violations using spatial analysis and machine learning methods in the city of Luzhou, China. Violations committed by taxi drivers are the focus of the current study since they constitute a significant proportion of total violations reported in the city. Georeferenced violation data for the year 2016 was obtained from the traffic police department. Detailed descriptive analysis is presented to summarize key statistics about various violation types. Results revealed that over-speeding was the most prevalent violation type observed in the study area. Frequency-based nearest neighborhood cluster methods in Arc map Geographic Information System (GIS) were used to develop hotspot maps for different violation types that are vital for prioritizing and conducting treatment alternatives efficiently. Finally, different machine learning (ML) methods, including decision tree, AdaBoost with a base estimator decision tree, and stack model, were employed to predict and classify each violation type. The proposed methods were compared based on different evaluation metrics like accuracy, F-1 measure, specificity, and log loss. Prediction results demonstrated the adequacy and robustness of proposed machine learning (ML) methods. However, a detailed comparative analysis showed that the stack model outperformed other models in terms of proposed evaluation metrics.
- Subjects :
- Automobile Driving
China
taxi drivers
Geographic information system
Computer science
Health, Toxicology and Mutagenesis
Decision tree
lcsh:Medicine
Poison control
Machine learning
computer.software_genre
Article
03 medical and health sciences
0302 clinical medicine
Risk-Taking
Traffic police
0502 economics and business
aggressive driving
030212 general & internal medicine
AdaBoost
Cities
traffic violations
050210 logistics & transportation
Descriptive statistics
business.industry
lcsh:R
05 social sciences
Public Health, Environmental and Occupational Health
Accidents, Traffic
Estimator
hotspot analysis
Aggressive driving
machine learning
Artificial intelligence
Geographic Information System (GIS)
business
computer
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- International Journal of Environmental Research and Public Health, Volume 17, Issue 11, International Journal of Environmental Research and Public Health, Vol 17, Iss 3937, p 3937 (2020)
- Accession number :
- edsair.doi.dedup.....5c0a9c48320fc27e20b116c0f4a2cd06