Affinity and Diversity: Quantifying Mechanisms of Data Augmentation
Machine Learning
2020-06-08 v2 Computer Vision and Pattern Recognition
Machine Learning
Abstract
Though data augmentation has become a standard component of deep neural network training, the underlying mechanism behind the effectiveness of these techniques remains poorly understood. In practice, augmentation policies are often chosen using heuristics of either distribution shift or augmentation diversity. Inspired by these, we seek to quantify how data augmentation improves model generalization. To this end, we introduce interpretable and easy-to-compute measures: Affinity and Diversity. We find that augmentation performance is predicted not by either of these alone but by jointly optimizing the two.
Cite
@article{arxiv.2002.08973,
title = {Affinity and Diversity: Quantifying Mechanisms of Data Augmentation},
author = {Raphael Gontijo-Lopes and Sylvia J. Smullin and Ekin D. Cubuk and Ethan Dyer},
journal= {arXiv preprint arXiv:2002.08973},
year = {2020}
}
Comments
10 pages, 7 figures