Feb. 7, 2024, 5:42 a.m. | Xin Chen Mingliang Hou Tao Tang Achhardeep Kaur Feng Xia

cs.LG updates on arXiv.org arxiv.org

With the arrival of the big data era, mobility profiling has become a viable method of utilizing enormous amounts of mobility data to create an intelligent transportation system. Mobility profiling can extract potential patterns in urban traffic from mobility data and is critical for a variety of traffic-related applications. However, due to the high level of complexity and the huge amount of data, mobility profiling faces huge challenges. Digital Twin (DT) technology paves the way for cost-effective and performance-optimised management …

applications become big big data cs.ai cs.hc cs.lg data digital digital twin extract graph graph learning intelligent intelligent transportation mobility patterns profiling temporal traffic transportation twin urban

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