This paper introduces Label Learning Flows (LLF), a novel framework for weakly supervised learning that leverages conditional normalizing flows to model the uncertainty in label estimation, outperforming existing deterministic methods in classification and regression tasks.
SCARCE proposes a consistent approach for complementary-label learning without relying on distribution assumptions, showing superior performance.
Introducing Reduced Labels for Long-Tailed Data to preserve supervised information and decrease labeling costs.
提案されたSCARCEアプローチは、均一な分布仮定や通常のラベルトレーニングセットに依存せず、一貫性のある補完ラベル学習を実現します。
The authors propose RulePrompt, a novel approach that leverages logical rules to enhance the understanding of categories in weakly supervised text classification tasks using prompting PLMs.