2021
DOI: 10.48550/arxiv.2105.11804
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Bridging Few-Shot Learning and Adaptation: New Challenges of Support-Query Shift

Abstract: Few-Shot Learning (FSL) algorithms have made substantial progress in learning novel concepts with just a handful of labelled data. To classify query instances from novel classes encountered at test-time, they only require a support set composed of a few labelled samples. FSL benchmarks commonly assume that those queries come from the same distribution as instances in the support set. However, in a realistic setting, data distribution is plausibly subject to change, a situation referred to as Distribution Shift… Show more

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