Rule extraction from an optimized neural network for traffic crash frequency modeling.

Journal: Accident; analysis and prevention
Published Date:

Abstract

This study develops a neural network (NN) model to explore the nonlinear relationship between crash frequency and risk factors. To eliminate the possibility of over-fitting and to deal with the black-box characteristic, a network structure optimization algorithm and a rule extraction method are proposed. A case study compares the performance of the trained and modified NN models with that of the traditional negative binomial (NB) model for analyzing crash frequency on road segments in Hong Kong. The results indicate that the optimized NNs have somewhat better fitting and predictive performance than the NB models. Moreover, the smaller training/testing errors in the optimized NNs with pruned input and hidden nodes demonstrate the ability of the structure optimization algorithm to identify the insignificant factors and to improve the model generalization capacity. Furthermore, the rule-set extracted from the optimized NN model can reveal the effect of each explanatory variable on the crash frequency under different conditions, and implies the existence of nonlinear relationship between factors and crash frequency. With the structure optimization algorithm and rule extraction method, the modified NN model has great potential for modeling crash frequency, and may be considered as a good alternative for road safety analysis.

Authors

  • Qiang Zeng
    State Key Laboratory of Environment Health (Incubation), Key Laboratory of Environment and Health, Ministry of Education, Key Laboratory of Environment and Health (Wuhan), Ministry of Environmental Protection, School of Public Health, Tongji Medical College, Huazhong University of Science and Technology, #13 Hangkong Road, Wuhan, Hubei 430030, China.
  • Helai Huang
    Urban Transport Research Center, School of Traffic and Transportation Engineering, Central South University, Changsha, Hunan, 410075 PR China. Electronic address: huanghelai@csu.edu.cn.
  • Xin Pei
    Department of Automation, Tsinghua University, Beijing, PR China. Electronic address: peixin@mail.tsinghua.edu.cn.
  • S C Wong
    Department of Civil Engineering, The University of Hong Kong, Pokfulam Road, Hong Kong. Electronic address: hhecwsc@hku.hk.
  • Mingyun Gao
    Business School of Hunan University, Changsha, Hunan 410082, PR China. Electronic address: 1198915787@qq.com.