Joint Learning
Joint learning, a machine learning paradigm, aims to improve model performance and efficiency by simultaneously training multiple related tasks or datasets. Current research focuses on diverse applications, including multimodal data fusion (e.g., audio-text, images-videos), multi-task reinforcement learning, and distributed model training across heterogeneous devices, often employing transformer-based architectures, contrastive learning, and optimal transport methods. This approach offers significant advantages by leveraging shared representations and inter-task relationships, leading to improved accuracy, robustness, and reduced computational costs across various fields like computer vision, natural language processing, and robotics.
Papers
June 9, 2024
May 30, 2024
May 28, 2024
April 18, 2024
April 2, 2024
March 25, 2024
March 19, 2024
March 18, 2024
January 21, 2024
January 8, 2024
December 29, 2023
December 28, 2023
December 7, 2023
December 1, 2023
November 27, 2023
November 2, 2023
October 6, 2023
October 2, 2023