Pseudo Label
Pseudo-labeling is a semi-supervised learning technique that leverages unlabeled data by using a model's predictions as pseudo-labels to augment training datasets. Current research focuses on improving the accuracy and reliability of these pseudo-labels, addressing issues like class imbalance and noise through methods such as thresholding, contrastive learning, and teacher-student model architectures. This technique is significant because it allows for training high-performing models with limited labeled data, impacting various applications including object detection, image classification, and medical image segmentation.
Papers
ECAP: Extensive Cut-and-Paste Augmentation for Unsupervised Domain Adaptive Semantic Segmentation
Erik Brorsson, Knut Åkesson, Lennart Svensson, Kristofer Bengtsson
Unsupervised Multilingual Dense Retrieval via Generative Pseudo Labeling
Chao-Wei Huang, Chen-An Li, Tsu-Yuan Hsu, Chen-Yu Hsu, Yun-Nung Chen
Cross Pseudo-Labeling for Semi-Supervised Audio-Visual Source Localization
Yuxin Guo, Shijie Ma, Yuhao Zhao, Hu Su, Wei Zou
RulePrompt: Weakly Supervised Text Classification with Prompting PLMs and Self-Iterative Logical Rules
Miaomiao Li, Jiaqi Zhu, Yang Wang, Yi Yang, Yilin Li, Hongan Wang
Enhancing Weakly Supervised 3D Medical Image Segmentation through Probabilistic-aware Learning
Zhaoxin Fan, Runmin Jiang, Junhao Wu, Xin Huang, Tianyang Wang, Heng Huang, Min Xu