Balancing Uncertainty and Diversity of Samples: Leveraging Diversity of Least, High Confidence Samples for Effective Active Learning
Researchers have developed four new hybrid sampling methods for active learning in deep learning models, aiming to improve efficiency in data labeling for computer vision tasks. These methods combine the selection of both easy and hard samples, while also ensuring diversity within the chosen data points. Experiments demonstrated that the 'Least Confident and Diverse' (LCD) method outperformed existing state-of-the-art approaches by effectively selecting uncertain and diverse instances to help models learn more distinct features. AI
IMPACT Improves efficiency in data labeling for deep learning models, potentially reducing costs and time for AI development.