论文标题
基于深度学习的文本样式转移的审查
Review of Text Style Transfer Based on Deep Learning
论文作者
论文摘要
文本样式转移是最近自然语言处理中的一个热门问题,该问题主要研究文本,以通过进行一些更改来适应不同的特定情况,受众和目的。文本的风格通常包括许多方面,例如形态学,语法,情感,复杂性,流利,紧张,音调等。在传统的文本样式转移模型中,文本样式通常受到专家知识和手工设计的规则的依赖,但是随着在自然语言处理领域的深度学习应用,基于深度学习的文本样式转移方法开始进行大量研究。近年来,文本样式转移已成为自然语言处理研究中的热门问题。本文总结了近年来基于深度学习的文本样式转移模型的研究,并总结,分析和比较了主要的研究方向和进步。此外,本文还介绍了通常用于文本样式传输的公共数据集和评估指标。最后,总结了文本样式转移模型的现有特征,并对基于深度学习的文本样式转移模型的未来发展趋势进行了分析和预测。
Text style transfer is a hot issue in recent natural language processing,which mainly studies the text to adapt to different specific situations, audiences and purposes by making some changes. The style of the text usually includes many aspects such as morphology, grammar, emotion, complexity, fluency, tense, tone and so on. In the traditional text style transfer model, the text style is generally relied on by experts knowledge and hand-designed rules, but with the application of deep learning in the field of natural language processing, the text style transfer method based on deep learning Started to be heavily researched. In recent years, text style transfer is becoming a hot issue in natural language processing research. This article summarizes the research on the text style transfer model based on deep learning in recent years, and summarizes, analyzes and compares the main research directions and progress. In addition, the article also introduces public data sets and evaluation indicators commonly used for text style transfer. Finally, the existing characteristics of the text style transfer model are summarized, and the future development trend of the text style transfer model based on deep learning is analyzed and forecasted.