Learning Framework
Learning frameworks encompass the design and implementation of algorithms and architectures for training machine learning models, addressing challenges like data heterogeneity, privacy concerns, and efficient resource utilization. Current research emphasizes techniques such as federated learning (with variations including clustered and personalized approaches), knowledge distillation, and contrastive learning, often incorporating neural networks (e.g., CNNs, RNNs, Transformers) and incorporating logical reasoning. These frameworks are crucial for advancing various fields, including computer vision, natural language processing, robotics, and medical image analysis, by enabling the development of more robust, efficient, and privacy-preserving machine learning models for diverse applications.
Papers
Learning New Skills after Deployment: Improving open-domain internet-driven dialogue with human feedback
Jing Xu, Megan Ung, Mojtaba Komeili, Kushal Arora, Y-Lan Boureau, Jason Weston
3D Pose Based Feedback for Physical Exercises
Ziyi Zhao, Sena Kiciroglu, Hugues Vinzant, Yuan Cheng, Isinsu Katircioglu, Mathieu Salzmann, Pascal Fua