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arxiv: 2104.08268 · v1 · pith:F4GXED6F · submitted 2021-04-16 · cs.CL · cs.LG

Data Augmentation for Voice-Assistant NLU using BERT-based Interchangeable Rephrase

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classification cs.CL cs.LG
keywords augmentationdatamethodtaskstechniquesassistantback-translationbert-based
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We introduce a data augmentation technique based on byte pair encoding and a BERT-like self-attention model to boost performance on spoken language understanding tasks. We compare and evaluate this method with a range of augmentation techniques encompassing generative models such as VAEs and performance-boosting techniques such as synonym replacement and back-translation. We show our method performs strongly on domain and intent classification tasks for a voice assistant and in a user-study focused on utterance naturalness and semantic similarity.

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