Semi-Supervised and Active Few-Shot Learning with Prototypical Networks
2017-11-29Unverified0· sign in to hype
Rinu Boney, Alexander Ilin
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ReproduceAbstract
We consider the problem of semi-supervised few-shot classification where a classifier needs to adapt to new tasks using a few labeled examples and (potentially many) unlabeled examples. We propose a clustering approach to the problem. The features extracted with Prototypical Networks are clustered using K-means with the few labeled examples guiding the clustering process. We note that in many real-world applications the adaptation performance can be significantly improved by requesting the few labels through user feedback. We demonstrate good performance of the active adaptation strategy using image data.