Jan. 1, 2024, midnight | Chi-Heng Lin, Chiraag Kaushik, Eva L. Dyer, Vidya Muthukumar

JMLR www.jmlr.org

Data augmentation (DA) is a powerful workhorse for bolstering performance in modern machine learning. Specific augmentations like translations and scaling in computer vision are traditionally believed to improve generalization by generating new (artificial) data from the same distribution. However, this traditional viewpoint does not explain the success of prevalent augmentations in modern machine learning (e.g. randomized masking, cutout, mixup), that greatly alter the training data distribution. In this work, we develop a new theoretical framework to characterize the impact of …

artificial augmentation computer computer vision data distribution good however machine machine learning modern performance perspective regularization scaling translations vision

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