Semi Supervised Learning
Semi-supervised learning (SSL) aims to improve machine learning model accuracy by leveraging both limited labeled and abundant unlabeled data. Current research focuses on refining pseudo-labeling techniques to reduce noise and bias in unlabeled data, employing teacher-student models and contrastive learning, and developing novel algorithms to effectively utilize all available unlabeled samples, including those from open sets or with imbalanced class distributions. These advancements are significant because they reduce the reliance on expensive and time-consuming manual labeling, thereby expanding the applicability of machine learning to diverse domains with limited annotated data.
Papers
RelationMatch: Matching In-batch Relationships for Semi-supervised Learning
Yifan Zhang, Jingqin Yang, Zhiquan Tan, Yang Yuan
Confidence-Guided Semi-supervised Learning in Land Cover Classification
Wanli Ma, Oktay Karakus, Paul L. Rosin
Cold PAWS: Unsupervised class discovery and addressing the cold-start problem for semi-supervised learning
Evelyn J. Mannix, Howard D. Bondell
Transfer Learning for Fine-grained Classification Using Semi-supervised Learning and Visual Transformers
Manuel Lagunas, Brayan Impata, Victor Martinez, Virginia Fernandez, Christos Georgakis, Sofia Braun, Felipe Bertrand
Semi-Supervised Object Detection for Sorghum Panicles in UAV Imagery
Enyu Cai, Jiaqi Guo, Changye Yang, Edward J. Delp
Multi-Level Global Context Cross Consistency Model for Semi-Supervised Ultrasound Image Segmentation with Diffusion Model
Fenghe Tang, Jianrui Ding, Lingtao Wang, Min Xian, Chunping Ning
A Comparison of Semi-Supervised Learning Techniques for Streaming ASR at Scale
Cal Peyser, Michael Picheny, Kyunghyun Cho, Rohit Prabhavalkar, Ronny Huang, Tara Sainath
ESimCSE Unsupervised Contrastive Learning Jointly with UDA Semi-Supervised Learning for Large Label System Text Classification Mode
Ruan Lu, Zhou HangCheng, Ran Meng, Zhao Jin, Qin JiaoYu, Wei Feng, Wang ChenZi
MER 2023: Multi-label Learning, Modality Robustness, and Semi-Supervised Learning
Zheng Lian, Haiyang Sun, Licai Sun, Kang Chen, Mingyu Xu, Kexin Wang, Ke Xu, Yu He, Ying Li, Jinming Zhao, Ye Liu, Bin Liu, Jiangyan Yi, Meng Wang, Erik Cambria, Guoying Zhao, Björn W. Schuller, Jianhua Tao
Semi-supervised Learning of Pushforwards For Domain Translation & Adaptation
Nishant Panda, Natalie Klein, Dominic Yang, Patrick Gasda, Diane Oyen