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When Transfer Learning Meets Cross-City Urban Flow Prediction: Spatio-Temporal Adaptation Matters
2022
Proceedings of the Thirty-First International Joint Conference on Artificial Intelligence
unpublished
Urban flow prediction is a fundamental task to build smart cities, where neural networks have become the most popular method. However, the deep learning methods typically rely on massive training data that are probably inaccessible in real world. In light of this, the community calls for knowledge transfer. However, when adapting transfer learning for cross-city prediction tasks, existing studies are built on static knowledge transfer, ignoring the fact inter-city correlations change
doi:10.24963/ijcai.2022/279
fatcat:bm2hfwekmjgtndnbwtxsrcswzy