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Dataset Distillation

Dataset distillation is the task of synthesizing a small dataset such that models trained on it achieve high performance on the original large dataset. A dataset distillation algorithm takes as input a large real dataset to be distilled (training set), and outputs a small synthetic distilled dataset, which is evaluated via testing models trained on this distilled dataset on a separate real dataset (validation/test set). A good small distilled dataset is not only useful in dataset understanding, but has various applications (e.g., continual learning, privacy, neural architecture search, etc.).

Papers

Showing 6170 of 216 papers

TitleStatusHype
Unlocking the Potential of Federated Learning: The Symphony of Dataset Distillation via Deep Generative LatentsCode1
Exploiting Inter-sample and Inter-feature Relations in Dataset DistillationCode1
Flowing Datasets with Wasserstein over Wasserstein Gradient FlowsCode1
OD3: Optimization-free Dataset Distillation for Object DetectionCode1
Dataset Factorization for CondensationCode1
DREAM: Efficient Dataset Distillation by Representative MatchingCode1
Dark Distillation: Backdooring Distilled Datasets without Accessing Raw Data0
Distilling Long-tailed Datasets0
Distribution-aware Dataset Distillation for Efficient Image Restoration0
Dataset Distillation via the Wasserstein Metric0
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