Learning Augmentation Distributions Using Transformed Risk Minimization

Abstract

We propose a new \emph{Transformed Risk Minimization} (TRM) framework as an extension of classical risk minimization. In TRM, we optimize not only over predictive models, but also over data transformations; specifically over distributions thereof. As a key application, we focus on learning augmentations; for instance appropriate rotations of images, to improve classification performance with a given class of predictors. Our TRM method (1) jointly learns transformations and models in a \emph{single training loop}, (2) works with any training algorithm applicable to standard risk minimization, and (3) handles any transforms, such as discrete and continuous classes of augmentations. To avoid overfitting when implementing empirical transformed risk minimization, we propose a novel regularizer based on PAC-Bayes theory. For learning augmentations of images, we propose a new parametrization of the space of augmentations via a stochastic composition of blocks of geometric transforms. This leads to the new \emph{Stochastic Compositional Augmentation Learning} (SCALE) algorithm. The performance of TRM with SCALE compares favorably to prior methods on CIFAR10/100. Additionally, we show empirically that SCALE can correctly learn certain symmetries in the data distribution (recovering rotations on rotated MNIST) and can also improve calibration of the learned model.

Cite

Text

Chatzipantazis et al. "Learning Augmentation Distributions Using Transformed Risk Minimization." Transactions on Machine Learning Research, 2023.

Markdown

[Chatzipantazis et al. "Learning Augmentation Distributions Using Transformed Risk Minimization." Transactions on Machine Learning Research, 2023.](https://mlanthology.org/tmlr/2023/chatzipantazis2023tmlr-learning/)

BibTeX

@article{chatzipantazis2023tmlr-learning,
  title     = {{Learning Augmentation Distributions Using Transformed Risk Minimization}},
  author    = {Chatzipantazis, Evangelos and Pertigkiozoglou, Stefanos and Daniilidis, Kostas and Dobriban, Edgar},
  journal   = {Transactions on Machine Learning Research},
  year      = {2023},
  url       = {https://mlanthology.org/tmlr/2023/chatzipantazis2023tmlr-learning/}
}