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Generalizing Dataset Distillation via Deep Generative Prior

George Cazenavette, Tongzhou Wang, Antonio Torralba, Alexei A. Efros, Jun-Yan Zhu

202349 citationsDOI

Abstract

Dataset Distillation aims to distill an entire dataset's knowledge into a few synthetic images. The idea is to synthe-size a small number of synthetic data points that, when given to a learning algorithm as training data, result in a model approximating one trained on the original data. Despite a recent upsurge of progress in the field, existing dataset dis-tillation methods fail to generalize to new architectures and scale to high-resolution datasets. To overcome the above issues, we propose to use the learned prior from pretrained deep generative models to synthesize the distilled data. To achieve this, we present a new optimization algorithm that distills a large number of images into a few intermediate feature vectors in the generative model's latent space. Our method augments existing techniques, significantly improving cross-architecture generalization in all settings.

Topics & Concepts

Computer scienceGeneralizationGenerative grammarArtificial intelligenceMachine learningDistillationField (mathematics)Generative modelFeature (linguistics)Deep learningSynthetic dataPattern recognition (psychology)MathematicsMathematical analysisChemistryPure mathematicsPhilosophyOrganic chemistryLinguisticsGenerative Adversarial Networks and Image SynthesisAdvanced Image and Video Retrieval TechniquesAdvanced Neural Network Applications
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