Unsupervised Text Style Transfer via Iterative Matching and Translation
2019
Text style transfer seeks to learn how to automatically rewrite sentences
from a source domain to the target domain in different styles, while
simultaneously preserving their semantic contents. A major challenge in this
task stems from the lack of parallel data that connects the source and target
styles. Existing approaches try to disentangle content and style, but this is
quite difficult and often results in poor content-preservation and
grammaticality. In contrast, we propose a novel approach by first constructing
a pseudo-parallel resource that aligns a subset of sentences with similar
content between source and target corpus. And then a standard
sequence-to-sequence model can be applied to learn the style transfer.
Subsequently, we iteratively refine the learned style transfer function while
improving upon the imperfections in our original alignment. Our method is
applied to the tasks of sentiment modification and formality transfer, where it
outperforms state-of-the-art systems by a large margin. As an auxiliary
contribution, we produced a publicly-available test set with human-generated
style transfers for future community use.
- Correction
- Source
- Cite
- Save
- Machine Reading By IdeaReader
14
References
14
Citations
NaN
KQI