ComRank: Ranking Loss for Multi-Label Complementary Label Learning

Neural Information Processing Systems 

Multi-label complementary label learning (MLCLL) is a weakly supervised paradigm that addresses multi-label learning (MLL) tasks using complementary labels (i.e., irrelevant labels) instead of relevant labels. Existing methods typically adopt an unbiased risk estimator (URE) under the assumption that complementary labels follow a uniform distribution. However, this assumption fails in realworld scenarios due to instance-specific annotation biases, making URE-based methods ineffective under such conditions.