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Zero-Shot Fine-Grained Style Transfer: Leveraging Distributed Continuous Style Representations to Transfer To Unseen Styles (1911.03914v1)

Published 10 Nov 2019 in cs.CL

Abstract: Text style transfer is usually performed using attributes that can take a handful of discrete values (e.g., positive to negative reviews). In this work, we introduce an architecture that can leverage pre-trained consistent continuous distributed style representations and use them to transfer to an attribute unseen during training, without requiring any re-tuning of the style transfer model. We demonstrate the method by training an architecture to transfer text conveying one sentiment to another sentiment, using a fine-grained set of over 20 sentiment labels rather than the binary positive/negative often used in style transfer. Our experiments show that this model can then rewrite text to match a target sentiment that was unseen during training.

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Authors (4)
  1. Eric Michael Smith (20 papers)
  2. Diana Gonzalez-Rico (3 papers)
  3. Emily Dinan (28 papers)
  4. Y-Lan Boureau (26 papers)
Citations (11)

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