LGMLNov 2, 2020

SapAugment: Learning A Sample Adaptive Policy for Data Augmentation

arXiv:2011.01156v217 citations
AI Analysis

This work addresses the challenge of optimizing data augmentation for machine learning models, particularly in speech recognition, by introducing an adaptive approach that tailors augmentation strength to sample difficulty, offering a methodical alternative to hand-crafted policies.

The paper tackles the problem of applying uniform data augmentation to all training samples by proposing SapAugment, a sample-adaptive policy that adjusts augmentation parameters based on training loss, resulting in up to a 21% relative reduction in word error rate on the LibriSpeech dataset for automatic speech recognition.

Data augmentation methods usually apply the same augmentation (or a mix of them) to all the training samples. For example, to perturb data with noise, the noise is sampled from a Normal distribution with a fixed standard deviation, for all samples. We hypothesize that a hard sample with high training loss already provides strong training signal to update the model parameters and should be perturbed with mild or no augmentation. Perturbing a hard sample with a strong augmentation may also make it too hard to learn from. Furthermore, a sample with low training loss should be perturbed by a stronger augmentation to provide more robustness to a variety of conditions. To formalize these intuitions, we propose a novel method to learn a Sample-Adaptive Policy for Augmentation -- SapAugment. Our policy adapts the augmentation parameters based on the training loss of the data samples. In the example of Gaussian noise, a hard sample will be perturbed with a low variance noise and an easy sample with a high variance noise. Furthermore, the proposed method combines multiple augmentation methods into a methodical policy learning framework and obviates hand-crafting augmentation parameters by trial-and-error. We apply our method on an automatic speech recognition (ASR) task, and combine existing and novel augmentations using the proposed framework. We show substantial improvement, up to 21% relative reduction in word error rate on LibriSpeech dataset, over the state-of-the-art speech augmentation method.

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