Multi Label
Multi-label classification tackles the problem of assigning multiple, non-exclusive labels to a single data instance, addressing the limitations of single-label approaches in many real-world scenarios. Current research focuses on improving model robustness against adversarial attacks and handling class imbalances, often employing deep neural networks (including CNNs and Transformers), autoencoders for data augmentation, and contrastive learning techniques. These advancements are crucial for applications ranging from image recognition and bioacoustic analysis to medical diagnosis and natural language processing, enabling more nuanced and accurate interpretations of complex data.
Papers
Self-Supervised Pyramid Representation Learning for Multi-Label Visual Analysis and Beyond
Cheng-Yen Hsieh, Chih-Jung Chang, Fu-En Yang, Yu-Chiang Frank Wang
NEAR: Named Entity and Attribute Recognition of clinical concepts
Namrata Nath, Sang-Heon Lee, Ivan Lee
PercentMatch: Percentile-based Dynamic Thresholding for Multi-Label Semi-Supervised Classification
Junxiang Huang, Alexander Huang, Beatriz C. Guerra, Yen-Yun Yu
Discriminative Kernel Convolution Network for Multi-Label Ophthalmic Disease Detection on Imbalanced Fundus Image Dataset
Amit Bhati, Neha Gour, Pritee Khanna, Aparajita Ojha
Class-Incremental Lifelong Learning in Multi-Label Classification
Kaile Du, Linyan Li, Fan Lyu, Fuyuan Hu, Zhenping Xia, Fenglei Xu