Journal ArticleUnknown
MetaMixUp: Learning Adaptive Interpolation Policy of MixUp With Metalearning
Authors
Author Affiliations
University of Electronic Science and Technology of China, Queens University, Centre Inria de l'Université Grenoble Alpes, Université Grenoble Alpes
Published InIEEE Transactions on Neural Networks and Learning Systems
Year2021
Citations45
Abstract
MixUp is an effective data augmentation method to regularize deep neural networks via random linear interpolations between pairs of samples and their labels. It plays an important role in model regularization, semisupervised learning (SSL), and domain adaption. However, despite its empirical success, its deficiency of randomly mixing samples has poorly been studied. Since deep networks are capable of memorizing the entire data set, the corrupted samples generated by vanilla MixUp with a badly chosen interpolation policy will degrade the performance of networks. To overcome overfitting to corrupted samples, inspired by metalearning (learning to learn), we propose a novel technique of learning to a mixup in this work, namely, MetaMixUp. Unlike the vanilla MixUp that samples interpolation policy from a predefined…
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