Joint predictioN
Joint prediction, encompassing the simultaneous forecasting of multiple related variables, aims to improve accuracy and efficiency compared to predicting each variable independently. Current research focuses on developing advanced architectures like Temporal Fusion Transformers and graph neural networks, often incorporating techniques such as multi-task learning, contrastive learning, and conformal prediction to enhance model performance and uncertainty quantification. This approach holds significant value across diverse fields, from healthcare (predicting vital signs) to autonomous driving (forecasting agent trajectories) and resource management (predicting skill demand and supply), by leveraging inherent correlations between variables for more robust and informative predictions.
Papers
Joint Prediction and Denoising for Large-scale Multilingual Self-supervised Learning
William Chen, Jiatong Shi, Brian Yan, Dan Berrebbi, Wangyou Zhang, Yifan Peng, Xuankai Chang, Soumi Maiti, Shinji Watanabe
Leveraging Herpangina Data to Enhance Hospital-level Prediction of Hand-Foot-and-Mouth Disease Admissions Using UPTST
Guoqi Yu, Hailun Yao, Huan Zheng, Ximing Xu