Smart City Gnosys

Smart city article details

Title Next Arrival And Destination Prediction Via Spatiotemporal Embedding With Urban Geography And Human Mobility Data
ID_Doc 39208
Authors Li P.; Wang Z.; Zhang X.; Wang P.; Liu K.
Year 2025
Published Mathematics, 13, 5
DOI http://dx.doi.org/10.3390/math13050746
Abstract With the development of transportation networks, countless trajectory data are accumulated, and understanding human mobility from traffic data could be helpful for smart cities, urban computing, and urban planning. Extracting valuable insights from traffic data, such as taxi trajectories, can significantly improve residents’ daily lives. There are many studies on spatiotemporal data mining. As we know, arrival prediction or regional function detection encompasses important tasks for traffic management and urban planning. However, trajectory data are often mutilated because of personal privacy and hardware limitations, i.e., we usually can only obtain partial trajectory information. In this paper, we develop an embedding method to predict the next arrival using the origin–destination (O-D) pair trajectory information and point of interest (POI) data. Moreover, the embedding information contains region latent features; thus, we also detect the regional function in this paper. Finally, we conduct a comprehensive experimental study on a real-world trajectory dataset. The experimental results demonstrate the benefit of predicting arrivals, and the embedding vectors can detect the regional function in a city. © 2025 by the authors.
Author Keywords arrival prediction; embedding; regional function detection


Similar Articles


Id Similarity Authors Title Published
25830 View0.901Liu C.; Zhang H.; Zhu G.; Guan H.; Kwong S.Exploring Trajectory Embedding Via Spatial-Temporal Propagation For Dynamic Region RepresentationsInformation Sciences, 668 (2024)
13471 View0.882Cheng J.; Huang J.; Zhang X.Castle: A Context-Aware Spatial-Temporal Location Embedding Pre-Training Model For Next Location PredictionInternational Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives, 48, 4/W2-2022 (2023)
23054 View0.878Chen C.; Zhang D.; Wang Y.; Huang H.Enabling Smart Urban Services With Gps Trajectory DataEnabling Smart Urban Services with GPS Trajectory Data (2021)
25909 View0.875Liu C.; Zhang H.; Guan H.; Zhang J.Extracting Region Function Representations Through Compressed Trajectory EmbeddingsData Compression Conference Proceedings (2024)
15923 View0.874Tsiligkaridis A.; Zhang J.; Paschalidis I.C.; Taguchi H.; Sakajo S.; Nikovski D.Context-Aware Destination And Time-To-Destination Prediction Using Machine LearningISC2 2022 - 8th IEEE International Smart Cities Conference (2022)
25549 View0.871Kong X.; Wang K.; Hou M.; Xia F.; Karmakar G.; Li J.Exploring Human Mobility For Multi-Pattern Passenger Prediction: A Graph Learning FrameworkIEEE Transactions on Intelligent Transportation Systems, 23, 9 (2022)
41597 View0.866Gao J.; Zheng D.; Yang S.Perceiving Spatiotemporal Traffic Anomalies From Sparse Representation-Modeled City DynamicsPersonal and Ubiquitous Computing, 27, 3 (2023)
34870 View0.862Tenzer M.; Rasheed Z.; Shafique K.Learning Citywide Patterns Of Life From Trajectory MonitoringGIS: Proceedings of the ACM International Symposium on Advances in Geographic Information Systems (2022)
2918 View0.861Li X.; He R.; Jiang C.; Jin X.; Tang Z.; Long W.; Deng Y.A Multiscale Spatial Prediction Model For Taxi Od Flow Based On Deep Gravity And Its Interpretability Research In Beijing; [北京市出租车 Od 流多尺度空间预测深度重力模型及其可解释性研究]Journal of Geo-Information Science, 26, 6 (2024)
40085 View0.859Fan Z.; Yang X.; Yuan W.; Jiang R.; Chen Q.; Song X.; Shibasaki R.Online Trajectory Prediction For Metropolitan Scale Mobility Digital TwinGIS: Proceedings of the ACM International Symposium on Advances in Geographic Information Systems (2022)