Learning from Label Proportions with Dual-proportion Constraints
arXiv cs.LG / 3/24/2026
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Key Points
- The paper addresses Learning from Label Proportions (LLP), a weakly supervised learning setting where training uses bag-level label proportion information to infer instance-level labels.
- It proposes LLP-DC, a training approach that enforces Dual proportion Constraints at both the bag level (matching the mean prediction to the given proportions) and the instance level (using pseudo-labels consistent with the constraints).
- The instance-level pseudo-label generation is formulated via a minimum-cost maximum-flow algorithm to produce hard pseudo-labels that satisfy the proportion requirements.
- Experiments across multiple benchmark datasets and varying bag sizes show that LLP-DC improves consistently over prior LLP methods.
- The authors provide public code for replication and further experimentation via the linked GitHub repository.
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