-Berger, A., Gebhardt, A., Müller-Hannemann, M., & Ostrowski, M. (2011). Stochastic delay prediction in large train networks. In 11th Workshop on Algorithmic Approaches for Transportation Modelling, Optimization and Systems. Schloss Dagstuhl-Leibniz-Zentrum fuer Informatik.
-Büker, T., & Seybold, B. (2012). Stochastic modelling of delay propagation in large networks. Journal of Rail Transport Planning & Management, 2(1-2), 34-50.
-Carey, M., & Kwieciński, A. (1994). Stochastic approximation to the effects of headways on knock-on delays of trains. Transportation Research Part B: Methodological, 28(4), 251-267.
-Corman, F., & Kecman, P. (2018). Stochastic prediction of train delays in real-time using Bayesian networks. Transportation Research Part C: Emerging Technologies, 95, 599-615.
-Gao, B., Ou, D., Dong, D., & Wu, Y. (2020). A data-driven two-stage prediction model for train primary-delay recovery time. International Journal of Software Engineering and Knowledge Engineering, 30(07), 921-940.
-Hallowell, S. F., & Harker, P. T. (1996). Predicting on-time line-haul performance in scheduled railroad operations. Transportation Science, 30(4), 364-378.
-Hauck, F., & Kliewer, N. (2020). Data analytics in railway operations: Using machine learning to predict train delays. In Operations Research Proceedings 2019. Springer, Cham, 741-747.
-Hauck, Florian, & Kliewer, Natalia. (2020). Data analytics in railway operations: Using machine learning to predict train delays. In Operations Research Proceedings 2019, Springer.741-747.
-Huang, P., Wen, C., Fu, L., Lessan, J., Jiang, C., Peng, Q., & Xu, X. (2020). Modeling train operation as sequences: A study of delay prediction with operation and weather data. Transportation Research Part E: Logistics and Transportation Review, 141, 102022.
-Huang, P., Wen, C., Fu, L., Peng, Q., & Li, Z. (2020). A hybrid model to improve the train running time prediction ability during high-speed railway disruptions. Safety Science, 122, 104510.
-Lemnian, M., Rückert, R., Rechner, S., Blendinger, C., & Müller-Hannemann, M. (2014). Timing of train disposition: Towards early passenger rerouting in case of delays. In 14th Workshop on Algorithmic Approaches for Transportation Modelling, Optimization, and Systems. Schloss Dagstuhl-Leibniz-Zentrum fuer Informatik.
-Li, ZhongCan, Wen, Chao, Hu, Rui, Xu, Chuanlin, Huang, Ping, & Jiang, Xi. (2021). Near-term train delay prediction in the Dutch railways network. International Journal of Rail Transportation, 9(6), 520-539.
-Marković, Nikola, Milinković, Sanjin, Tikhonov, Konstantin S, & Schonfeld, Paul. (2015). Analyzing passenger train arrival delays with support vector regression. Transportation Research Part C: Emerging Technologies, 56, 251-262.
-Shi, R., Wang, J., Xu, X., Wang, M., & Li, J. (2020). Arrival train delays prediction based on gradient boosting regression tress. In Proceedings of the 4th International Conference on Electrical and Information Technologies for Rail Transportation (EITRT) 2019: Rail Transportation Information Processing and Operational Management Technologies. Springer Singapore, 307-315.
-Yaghini, M., Khoshraftar, M. M., & Seyedabadi, M. (2013). Railway passenger train delay prediction via neural network model. Journal of Advanced Transportation, 47(3), 355-368.
-Yuan, J. (2007). Dealing with stochastic dependence in the modeling of train delays and delay propagation. In International Conference on Transportation Engineering, 3908-3914.
-Zhang, L., Feng, X., Ding, C., & Liu, Y. (2020). Mitigating errors of predicted delays of a train at neighbouring stops. IET Intelligent Transport Systems, 14(8), 873-879.
-Zilko, A. A., Kurowicka, D., & Goverde, R. M. (2016). Modeling railway disruption lengths with Copula Bayesian Networks. Transportation Research Part C: Emerging Technologies, 68, 350-368.