[1] Pal C, Hirayama S, Narahari S, et al. An insight of World Health Organization (WHO) accident database by cluster analysis with self-organizing map (SOM) [J]. Tra-c Injury Prevention, 2018, 19: 1-9. [2] Tamerius, Z X, Mantilla R, Greenfield-Huitt T. Precipitation efiects on motor vehicle crashes vary by space, time, and environmental conditions [J]. Weather, Climate, and Society, [4] Barba L, Rodriguez N, Montt C. Smoothing strategies combined with ARIMA and neural networks to improve the forecasting of tra-c accidents [J]. The Scientiflc World Journal, 2014(8): 14222674. [5] Gupta A K K, Ghosh S, Gupta R K. A Bayesian network based framework for real-time crash prediction on the basic freeway segments of urban expressways [J]. Accident Analysis & Prevention, 2012, 45: 373-381. [6] Lin L, Wang Q, Sadek A W. A novel variable selection method based on frequent pattern tree for real-time tra-c accident risk prediction [J]. Transportation Research Part C: Emerging Technologies, 2015, 55: 444-459. [7] Ren H, Song Y, Wang J, et al. A deep learning approach to the citywide tra-c accident risk prediction [C]// Proceedings of International Conference on Intelligent Transportation Systems. 2018: 3346-3351. [8] Zhang J, Zheng Y, Qi D. Deep spatio-temporal residual networks for citywide crowd flows prediction [C]// Proceedings of 31st AAAI Conference on Artiflcial Intelligence. 2017: 1655- 1661. [9] Chen C, Fan X, Zheng C, et al. SDCAE: stack denoising convolutional autoencoder model for accident risk prediction via tra-c big data [C]// 6th International Conference on Cloud, Big Data and Web Services. 2018: 328-333. [10] 王竟成, 王雨薇, 高煜光. 基于图卷积神经网络的交通预测研究综述[J]. 北京工业大学学报, 2022, 48(1): 1-12. [11] 朱凯利, 姜军, 梁朝阳. 基于图神经网络的城市交通流量预测研究[J]. 中国计算机学会通讯, 2021, 17(11): 71-79. [12] Rodgers J L, Nicewander W A. Thirteen ways to look at the correlation coe-cient [J]. The American Statistician, 1988, 42(1): 59-66. [13] Kingma D P, Ba J. Adam: a method for stochastic optimization [C]// International Conference on Learning Representations. 2014: 6980. [14] Tibshirani R. Regression shrinkage and selection via the lasso [J]. Journal of the Royal Statistical Society Series B: Statistical Methodology, 1996, 58(1): 267-288. [15] Cortes C, Vapnik V. Support-vector networks [J]. Machine Learning, 1995, 20(3): 273-297. [16] Quinlan J R. Induction of decision trees [J]. Machine Learning, 1986(1): 81-106. [17] Chen Q, Song X, Yamada H, et al. Learning deep representation from big and heterogeneous data for tra-c accident inference [C]// Proceedings of AAAI Conference on Artiflcial Intelligence. 2016: 1-7. 2016, 8(4): 399-407. [3] Chang L Y, Chen W C. Data mining of tree-based models to analyze freeway accident frequency [J]. Journal of Safety Research, 2005, 36(4): 365-375. |