FairDD: Fair Dataset Distillation
–Neural Information Processing Systems
Condensing large datasets into smaller synthetic counterparts has demonstrated its promise for image classification. However, previous research has overlooked a crucial concern in image recognition: ensuring that models trained on condensed datasets are unbiased towards protected attributes (PA), such as gender and race. Our investigation reveals that dataset distillation fails to alleviate the unfairness towards minority groups within original datasets.
Neural Information Processing Systems
Jun-14-2026, 06:13:05 GMT
- Technology: