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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 201216 of 216 papers

TitleStatusHype
Dataset Distillation by Automatic Training TrajectoriesCode0
On Divergence Measures for Bayesian PseudocoresetsCode0
Accelerating Dataset Distillation via Model AugmentationCode0
Image Distillation for Safe Data Sharing in HistopathologyCode0
Curriculum Coarse-to-Fine Selection for High-IPC Dataset DistillationCode0
Discovering Galaxy Features via Dataset DistillationCode0
DD-RobustBench: An Adversarial Robustness Benchmark for Dataset DistillationCode0
CONCORD: Concept-Informed Diffusion for Dataset DistillationCode0
Dataset Distillation using Neural Feature RegressionCode0
Behaviour DistillationCode0
Sequential Subset Matching for Dataset DistillationCode0
Data-to-Model Distillation: Data-Efficient Learning FrameworkCode0
Towards Mitigating Architecture Overfitting on Distilled DatasetsCode0
Color-Oriented Redundancy Reduction in Dataset DistillationCode0
Boosting the Cross-Architecture Generalization of Dataset Distillation through an Empirical StudyCode0
BACON: Bayesian Optimal Condensation Framework for Dataset DistillationCode0
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