2020
DOI: 10.48550/arxiv.2006.07540
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MetaPerturb: Transferable Regularizer for Heterogeneous Tasks and Architectures

Abstract: Regularization and transfer learning are two popular techniques to enhance generalization on unseen data, which is a fundamental problem of machine learning. Regularization techniques are versatile, as they are task-and architecture-agnostic, but they do not exploit a large amount of data available. Transfer learning methods learn to transfer knowledge from one domain to another, but may not generalize across tasks and architectures, and may introduce new training cost for adapting to the target task. To bridg… Show more

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