Dataset distillation introduces fairness gaps from subgroup pattern mismatches rather than just imbalance; distilling to a group-agnostic barycenter of predictive information reduces these gaps.
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition , pages=
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Fair Dataset Distillation via Cross-Group Barycenter Alignment
Dataset distillation introduces fairness gaps from subgroup pattern mismatches rather than just imbalance; distilling to a group-agnostic barycenter of predictive information reduces these gaps.
- DIVER:Diving Deeper into Distilled Data via Expressive Semantic Recovery