Paper
15 July 2022 Controlled text style transfer via noise enhancement of deep learning transformer
Xingxin Zhang, Shuhao Shi, Zhigang Guo, Gang Chen, Han Wei, Yongwang Tang, Liuyang Yu
Author Affiliations +
Proceedings Volume 12258, International Conference on Neural Networks, Information, and Communication Engineering (NNICE 2022); 122580C (2022) https://doi.org/10.1117/12.2639492
Event: International Conference on Neural Networks, Information, and Communication Engineering (NNICE 2022), 2022, Qingdao, China
Abstract
Text style transfer is one of the controllable text generation tasks, which can convert text style attributes. The mainstream method is to separate the content and style of the text, and then combine the content vectors with other style vectors to generate. However, implicit expression cannot completely separate meaning and style, separation and recombination may also lead to a decrease in the naturalness and fluency of the text. Therefore, we propose a new idea, which first encodes the text into a latent representation, and iteratively optimizes the latent representation with the smallest changes to achieve style transfer. Introducing noise enhancement before generating results improves the robustness of the generated system and reduces the occurrence of individual results with large errors. Experiments show that our optimization method based on noise enhancement performs well on two public datasets, Yelp and Amazon. Result has excellent performance in three indicators: content preservation, transfer strength, and fluency.
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Xingxin Zhang, Shuhao Shi, Zhigang Guo, Gang Chen, Han Wei, Yongwang Tang, and Liuyang Yu "Controlled text style transfer via noise enhancement of deep learning transformer", Proc. SPIE 12258, International Conference on Neural Networks, Information, and Communication Engineering (NNICE 2022), 122580C (15 July 2022); https://doi.org/10.1117/12.2639492
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KEYWORDS
Transformers

Computer programming

Binary data

Data modeling

Reconstruction algorithms

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