Label Information
Label information, crucial for supervised machine learning, is being actively investigated for its efficient use and even its replacement in various contexts. Current research focuses on developing methods that leverage limited or noisy labels, including techniques like self-supervised learning, positive-unlabeled learning, and the incorporation of visual prompts or label-enhanced representations within model architectures such as deep predictive coding networks, large language models, and graph neural networks. These advancements aim to improve model performance, address ethical concerns related to biased labels, and enable applications in diverse fields like image matting, extreme classification, and federated learning where labeled data is scarce or expensive to obtain.
Papers
Ultra-Fine Entity Typing with Prior Knowledge about Labels: A Simple Clustering Based Strategy
Na Li, Zied Bouraoui, Steven Schockaert
Beyond Labels: Empowering Human Annotators with Natural Language Explanations through a Novel Active-Learning Architecture
Bingsheng Yao, Ishan Jindal, Lucian Popa, Yannis Katsis, Sayan Ghosh, Lihong He, Yuxuan Lu, Shashank Srivastava, Yunyao Li, James Hendler, Dakuo Wang