Computer Science > Machine Learning
[Submitted on 10 Oct 2022 (v1), last revised 27 Feb 2024 (this version, v3)]
Title:The good, the bad and the ugly sides of data augmentation: An implicit spectral regularization perspective
View PDFAbstract: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 a general class of DA on underparameterized and overparameterized linear model generalization. Our framework reveals that DA induces implicit spectral regularization through a combination of two distinct effects: a) manipulating the relative proportion of eigenvalues of the data covariance matrix in a training-data-dependent manner, and b) uniformly boosting the entire spectrum of the data covariance matrix through ridge regression. These effects, when applied to popular augmentations, give rise to a wide variety of phenomena, including discrepancies in generalization between over-parameterized and under-parameterized regimes and differences between regression and classification tasks. Our framework highlights the nuanced and sometimes surprising impacts of DA on generalization, and serves as a testbed for novel augmentation design.
Submission history
From: Chiraag Kaushik [view email][v1] Mon, 10 Oct 2022 21:30:46 UTC (8,655 KB)
[v2] Wed, 4 Jan 2023 17:45:56 UTC (8,661 KB)
[v3] Tue, 27 Feb 2024 20:55:18 UTC (9,098 KB)
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