2023
DOI: 10.1007/s10994-023-06387-w
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Understanding transfer learning and gradient-based meta-learning techniques

Mike Huisman,
Aske Plaat,
Jan N. van Rijn

Abstract: Deep neural networks can yield good performance on various tasks but often require large amounts of data to train them. Meta-learning received considerable attention as one approach to improve the generalization of these networks from a limited amount of data. Whilst meta-learning techniques have been observed to be successful at this in various scenarios, recent results suggest that when evaluated on tasks from a different data distribution than the one used for training, a baseline that simply finetunes a pr… Show more

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