Tianxiao Shen, Tao Lei, Regina Barzilay, Tommi Jaakkola
This paper focuses on style transfer on the basis of non-parallel text. This is an instance of a broad family of problems including machine translation, decipherment, and sentiment modification. The key challenge is to separate the content from other aspects such as style. We assume a shared latent content distribution across different text corpora, and propose a method that leverages refined alignment of latent representations to perform style transfer. The transferred sentences from one style should match example sentences from the other style as a population. We demonstrate the effectiveness of this cross-alignment method on three tasks: sentiment modification, decipherment of word substitution ciphers, and recovery of word order.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Text Generation | Yelp Review Dataset (Small) | G-Score (BLEU, Accuracy) | 38.66 | CAE |
| Text Style Transfer | Yelp Review Dataset (Small) | G-Score (BLEU, Accuracy) | 38.66 | CAE |
| 2D Semantic Segmentation | Yelp Review Dataset (Small) | G-Score (BLEU, Accuracy) | 38.66 | CAE |