Manual Label
Manual labeling, the process of assigning tags or annotations to data, is crucial for training machine learning models, particularly in image analysis, natural language processing, and other data-rich fields. Current research focuses on improving labeling efficiency through techniques like active learning, human-in-the-loop systems, and automated labeling methods using large language models and deep neural networks (e.g., U-Net, transformers). These advancements aim to reduce the cost and time associated with manual labeling, enabling the development of more accurate and robust models across diverse applications, from medical image analysis to infrastructure inspection.
Papers
Automated Molecular Concept Generation and Labeling with Large Language Models
Shichang Zhang, Botao Xia, Zimin Zhang, Qianli Wu, Fang Sun, Ziniu Hu, Yizhou Sun
Automatically Labeling $200B Life-Saving Datasets: A Large Clinical Trial Outcome Benchmark
Chufan Gao, Jathurshan Pradeepkumar, Trisha Das, Shivashankar Thati, Jimeng Sun