Selective Annotation
Selective annotation focuses on strategically choosing which data points to label, aiming to maximize model performance while minimizing annotation costs. Current research explores various active learning techniques, prompt engineering strategies for vision-language models, and methods to handle incomplete or noisy annotations, often employing Bayesian approaches, submodular optimization, or teacher-student models. This field is crucial for advancing machine learning in data-scarce domains like medical image analysis and natural language processing, where high-quality annotations are expensive and time-consuming to obtain.
Papers
October 18, 2024
October 14, 2024
September 12, 2024
September 8, 2024
July 8, 2024
July 2, 2024
June 26, 2024
May 23, 2024
May 20, 2024
April 2, 2024
March 31, 2024
March 15, 2024
March 3, 2024
February 22, 2024
October 16, 2023
September 23, 2023
July 9, 2023
May 22, 2023