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      Deep Active Learning in the Presence of Label Noise: A Survey

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          Abstract

          Deep active learning has emerged as a powerful tool for training deep learning models within a predefined labeling budget. These models have achieved performances comparable to those trained in an offline setting. However, deep active learning faces substantial issues when dealing with classification datasets containing noisy labels. In this literature review, we discuss the current state of deep active learning in the presence of label noise, highlighting unique approaches, their strengths, and weaknesses. With the recent success of vision transformers in image classification tasks, we provide a brief overview and consider how the transformer layers and attention mechanisms can be used to enhance diversity, importance, and uncertainty-based selection in queries sent to an oracle for labeling. We further propose exploring contrastive learning methods to derive good image representations that can aid in selecting high-value samples for labeling in an active learning setting. We also highlight the need for creating unified benchmarks and standardized datasets for deep active learning in the presence of label noise for image classification to promote the reproducibility of research. The review concludes by suggesting avenues for future research in this area.

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          Author and article information

          Journal
          arXiv
          2023
          22 February 2023
          23 February 2023
          19 September 2023
          21 September 2023
          February 2023
          Article
          10.48550/ARXIV.2302.11075
          f9b346c4-2665-4462-8e96-5ffd552dcb4e

          Creative Commons Attribution 4.0 International

          History

          Machine Learning (cs.LG),FOS: Computer and information sciences

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