Dataset Distillation using Neural Feature Regression
–Neural Information Processing Systems
Dataset distillation aims to learn a small synthetic dataset that preserves most of the information from the original dataset. Dataset distillation can be formulated as a bi-level meta-learning problem where the outer loop optimizes the meta-dataset and the inner loop trains a model on the distilled data.
Neural Information Processing Systems
Aug-14-2025, 09:20:46 GMT
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