Multi Label Classification
Multi-label classification tackles the problem of assigning multiple labels simultaneously to a single data point, addressing the limitations of single-label approaches in scenarios with overlapping or co-occurring classes. Current research focuses on improving model performance in challenging contexts like imbalanced datasets, noisy labels, and limited data, often employing deep learning architectures such as transformers and recurrent neural networks, along with innovative loss functions and data augmentation techniques. This field is crucial for applications ranging from medical diagnosis and natural language processing to environmental monitoring and multimedia analysis, where the ability to accurately predict multiple interrelated aspects is essential. The development of robust and efficient multi-label classifiers is driving advancements in various scientific domains and practical applications.
Papers
In-Context Learning for Extreme Multi-Label Classification
Karel D'Oosterlinck, Omar Khattab, François Remy, Thomas Demeester, Chris Develder, Christopher Potts
The Right Model for the Job: An Evaluation of Legal Multi-Label Classification Baselines
Martina Forster, Claudia Schulz, Prudhvi Nokku, Melicaalsadat Mirsafian, Jaykumar Kasundra, Stavroula Skylaki