We improve the recently-proposed "MixMatch" semi-supervised learning algorithm by introducing two new techniques: distribution alignment and augmentation anchoring. Distribution alignment encourages the marginal distribution of predictions on unlabeled data to be close to the marginal distribution of ground-truth labels. Augmentation anchoring feeds multiple strongly augmented versions of an input into the model and encourages each output to be close to the prediction for a weakly-augmented version of the same input. To produce strong augmentations, we propose a variant of AutoAugment which learns the augmentation policy while the model is being trained. Our new algorithm, dubbed ReMixMatch, is significantly more data-efficient than prior work, requiring between and less data to reach the same accuracy. For example, on CIFAR-10 with 250 labeled examples we reach accuracy (compared to MixMatch's accuracy of with examples) and a median accuracy of with just four labels per class. We make our code and data open-source at https://github.com/google-research/remixmatch.
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