Full Information
Full information research explores how to effectively utilize and manage information across diverse contexts, aiming to optimize information extraction, fusion, and utilization for improved decision-making and problem-solving. Current research focuses on developing advanced models, such as transformers and graph neural networks, to process and analyze various data types (e.g., logs, text, sensor data), often incorporating techniques like information propagation and entropy-based heuristics for enhanced performance. This field is significant for its potential to improve anomaly detection, prediction accuracy in complex systems (e.g., financial markets, healthcare), and the efficiency of information-seeking tasks, ultimately impacting various scientific disciplines and practical applications.
Papers
Leveraging deep active learning to identify low-resource mobility functioning information in public clinical notes
Tuan-Dung Le, Zhuqi Miao, Samuel Alvarado, Brittany Smith, William Paiva, Thanh Thieu
Information theoretic study of the neural geometry induced by category learning
Laurent Bonnasse-Gahot, Jean-Pierre Nadal