2021
DOI: 10.48550/arxiv.2105.14989
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Representation Learning Beyond Linear Prediction Functions

Abstract: Recent papers on the theory of representation learning has shown the importance of a quantity called diversity when generalizing from a set of source tasks to a target task. Most of these papers assume that the function mapping shared representations to predictions is linear, for both source and target tasks. In practice, researchers in deep learning use different numbers of extra layers following the pretrained model based on the difficulty of the new task. This motivates us to ask whether diversity can be ac… Show more

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