Much Progress
Research on "much progress" spans diverse fields, focusing on improving the reliability and interpretability of machine learning models, particularly in robotics, natural language processing, and computer vision. Current efforts concentrate on developing robust evaluation metrics, addressing data imbalances, and refining model architectures like transformers and generative adversarial networks (GANs) to enhance performance and mitigate biases. This work is crucial for advancing the trustworthiness and practical applicability of AI across various domains, from autonomous systems to biomedical applications.
Papers
Are we making much progress? Revisiting chemical reaction yield prediction from an imbalanced regression perspective
Yihong Ma, Xiaobao Huang, Bozhao Nan, Nuno Moniz, Xiangliang Zhang, Olaf Wiest, Nitesh V. Chawla
Progress and Opportunities of Foundation Models in Bioinformatics
Qing Li, Zhihang Hu, Yixuan Wang, Lei Li, Yimin Fan, Irwin King, Le Song, Yu Li