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
Minimal Learning Machine for Multi-Label Learning
Joonas Hämäläinen, Amauri Souza, César L. C. Mattos, João P. P. Gomes, Tommi Kärkkäinen
Towards Understanding Generalization of Macro-AUC in Multi-label Learning
Guoqiang Wu, Chongxuan Li, Yilong Yin
Semantic Embedded Deep Neural Network: A Generic Approach to Boost Multi-Label Image Classification Performance
Xin Shen, Xiaonan Zhao, Rui Luo
Learning in Imperfect Environment: Multi-Label Classification with Long-Tailed Distribution and Partial Labels
Wenqiao Zhang, Changshuo Liu, Lingze Zeng, Beng Chin Ooi, Siliang Tang, Yueting Zhuang
Multi-label Node Classification On Graph-Structured Data
Tianqi Zhao, Ngan Thi Dong, Alan Hanjalic, Megha Khosla
Light-weight Deep Extreme Multilabel Classification
Istasis Mishra, Arpan Dasgupta, Pratik Jawanpuria, Bamdev Mishra, Pawan Kumar