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MetaFun: Meta-Learning with Iterative Functional Updates

Jin Xu, Jean-François Ton, Hyunjik Kim, Adam R. Kosiorek, Yee Whye Teh

2020Oxford University Research Archive (ORA) (University of Oxford)24 citationsOpen Access PDF

Abstract

We develop a functional encoder-decoder approach to supervised meta-learning, where labeled data is encoded into an infinite-dimensional functional representation rather than a finite-dimensional one. Furthermore, rather than directly producing the representation, we learn a neural update rule resembling functional gradient descent which iteratively improves the representation. The final representation is used to condition the decoder to make predictions on unlabeled data. Our approach is the first to demonstrates the success of encoder-decoder style meta-learning methods like conditional neural processes on large-scale few-shot classification benchmarks such as miniImageNet and tieredImageNet, where it achieves state-of-the-art performance.

Topics & Concepts

Computer scienceRepresentation (politics)EncoderFeature learningArtificial intelligenceGradient descentMeta learning (computer science)Pattern recognition (psychology)Machine learningArtificial neural networkLawEconomicsTask (project management)PoliticsOperating systemPolitical scienceManagementDomain Adaptation and Few-Shot LearningHuman Pose and Action RecognitionMachine Learning and Data Classification
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