Few-shot learning with attention-based sequence-to-sequence models

8 Nov 2018Bertrand HigyPeter Bell

End-to-end approaches have recently become popular as a means of simplifying the training and deployment of speech recognition systems. However, they often require large amounts of data to perform well on large vocabulary tasks... (read more)

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