Invariance Learning in Deep Neural Networks with Differentiable Laplace Approximations

Neural Information Processing Systems 

Currently, the data augmentation parameters are chosen by human effort and costly cross-validation, which makes it cumbersome to apply to new datasets. We develop a convenient gradient-based method for selecting the data augmentation without validation data during training of a deep neural network.

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