The following publications are possibly variants of this publication:
- Urban ride-hailing demand prediction with multi-view information fusion deep learning frameworkYonghao Wu, Huyin Zhang, Cong Li, Shiming Tao, Fei Yang. apin, 53(8):8879-8897, April 2023. [doi]
- A Reinforcement Learning and Prediction-Based Lookahead Policy for Vehicle Repositioning in Online Ride-Hailing SystemsHonghao Wei, Zixian Yang, Xin Liu 0049, Zhiwei (Tony) Qin, Xiaocheng Tang, Lei Ying 0001. tits, 25(2):1846-1856, February 2024. [doi]
- Where to go: Agent Guidance with Deep Reinforcement Learning in A City-Scale Online Ride-Hailing ServiceJiyao Li, Vicki H. Allan. itsc 2022: 1943-1948 [doi]
- A Spatiotemporal Thermo Guidance Based Real-Time Online Ride-Hailing Dispatch FrameworkYuhan Guo, Yu Zhang, Junyu Yu, Xueli Shen. access, 8:115063-115077, 2020. [doi]
- A GAN framework-based dynamic multi-graph convolutional network for origin-destination-based ride-hailing demand predictionZiheng Huang, Weihan Zhang, Dujuan Wang, Yunqiang Yin. isci, 601:129-146, 2022. [doi]
- A Short-term Traffic Supply-Demand Gap Prediction Model with Integrated GCN-LSTM Method for Online Car-hailing ServicesChaofei Song, Runfeng Chang, Zibo Zhang, Anying Liu, Ruowen Li, Shenghan Zhou. dsit 2022: 1-7 [doi]
- E-LSTM-D: A Deep Learning Framework for Dynamic Network Link PredictionJinyin Chen, Jian Zhang 0023, Xuanheng Xu, Chenbo Fu, Dan Zhang 0001, Qingpeng Zhang, Qi Xuan. tsmc, 51(6):3699-3712, 2021. [doi]