4.7 Article

Predicting multiple types of traffic accident severity with explanations: A multi-task deep learning framework

Journal

SAFETY SCIENCE
Volume 146, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.ssci.2021.105522

Keywords

Deep learning; Traffic accident severity prediction; Explainable artificial intelligence; Machine learning

Funding

  1. National Natural Science Foundation of China [71874197, 71801217, 71871179]
  2. Hong Kong Research Grants Council [11509419]

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Predicting traffic accident severity is crucial for accident prevention and road user safety. Existing research often neglects property loss severity and struggles to predict different levels of severity, but our proposed multi-task DNN framework with explainable design outperforms state-of-the-art methods in accurately predicting and providing informative explanations for traffic accident severity.
Predicting traffic accident severity is essential for traffic accident prevention and vulnerable road user safety. Furthermore, the explainability of the prediction is crucial for practitioners to extract relevant risk factors and implement corresponding countermeasures. Most extant research ignores the property loss severity of traffic accidents and fails to predict different levels of death and property loss severity. Moreover, while the explainability of traditional models is easy to achieve, an explainable design of deep neural network (DNN) is extremely deficient in existing research. Few attempts that incorporate neural networks suffer from the lack of multiple hidden layers and the negligence of structural information when explaining predictions. In this study, we propose a multi-task DNN framework for predicting different levels of injury, death, and property loss severity. The multitask and deep learning design enables a comprehensive and precise analysis of traffic accident severity. Unlike many black-box DNN algorithms, our framework could identify key factors that cause the three types of traffic accident severity via layer-wise relevance propagation, which generates explanations based on the structure and weights of DNN. Based on the experiments conducted using Chinese traffic accident data, our proposed model predicts traffic accident severity risks with good accuracy and outperforms state-of-the-art methods. Furthermore, the case studies show that the key factors provided by our framework are more reasonable and informative than the explanations provided by baseline methods. Our model is the first multi-task learning model and the first DNN-based model for traffic accident severity prediction to the best of our knowledge.

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