Paper
14 March 2022 Research on the influencing factors of accident severity based on the optimization of density clustering algorithm
Hairong Ma, Tangyi Guo, Liu He
Author Affiliations +
Abstract
In order to explore the causes of road traffic accidents and analyze the influencing factors of the severity of the accident, this paper is based on the traffic accident record data of Dallas in 2019. Firstly, it uses Python to preprocess and render the data, and initially analyze the relationship between the independent variables and the severity of the traffic accident. Based on the preprocessed 12,392 pieces of accident data, it is divided into general accidents and major accidents according to the severity; Secondly, the adaptive K-DBSCAN density clustering algorithm is introduced to cluster the effective density according to the severity, to eliminate the noise point data, and reflect the hot spots of traffic accidents in Dallas state; Finally, the parameters of the established XGBoost classification model are traversed, and the parameters with the highest accuracy are selected, the characteristics that have an important impact on the accident severity prediction results in the feature set such as road and environment are sought. The feature importance ranking is obtained, and practical suggestions and measures are put forward from the perspective of model prediction.
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Hairong Ma, Tangyi Guo, and Liu He "Research on the influencing factors of accident severity based on the optimization of density clustering algorithm", Proc. SPIE 12165, International Conference on Intelligent Traffic Systems and Smart City (ITSSC 2021), 121650G (14 March 2022); https://doi.org/10.1117/12.2627802
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KEYWORDS
Roads

Data modeling

Visibility

Visibility through fog

Safety

Denoising

Detection and tracking algorithms

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