Semi-supervised Text Style Transfer: Cross Projection in Latent Space (1909.11493v1)
Abstract: Text style transfer task requires the model to transfer a sentence of one style to another style while retaining its original content meaning, which is a challenging problem that has long suffered from the shortage of parallel data. In this paper, we first propose a semi-supervised text style transfer model that combines the small-scale parallel data with the large-scale nonparallel data. With these two types of training data, we introduce a projection function between the latent space of different styles and design two constraints to train it. We also introduce two other simple but effective semi-supervised methods to compare with. To evaluate the performance of the proposed methods, we build and release a novel style transfer dataset that alters sentences between the style of ancient Chinese poem and the modern Chinese.
- Mingyue Shang (13 papers)
- Piji Li (75 papers)
- Zhenxin Fu (6 papers)
- Lidong Bing (144 papers)
- Dongyan Zhao (144 papers)
- Shuming Shi (126 papers)
- Rui Yan (250 papers)