This work presents a thorough review concerning recent studies and text generation advancements using Generative Adversarial Networks. The usage of adversarial learning for text generation is promising as it provides alternatives to generate the so-called "natural" language. Nevertheless, adversarial text generation is not a simple task as its foremost architecture, the Generative Adversarial Networks, were designed to cope with continuous information (image) instead of discrete data (text). Thus, most works are based on three possible options, i.e., Gumbel-Softmax differentiation, Reinforcement Learning, and modified training objectives. All alternatives are reviewed in this survey as they present the most recent approaches for generating text using adversarial-based techniques. The selected works were taken from renowned databases, such as Science Direct, IEEEXplore, Springer, Association for Computing Machinery, and arXiv, whereas each selected work has been critically analyzed and assessed to present its objective, methodology, and experimental results.
翻译:这项工作对最近利用基因反转网络进行的研究和文本生成进展进行了彻底审查,对文本生成使用对抗性学习很有希望,因为它为产生所谓的“自然”语言提供了替代方法,然而,对立性文字生成并不是一项简单的任务,因为其最重要的结构,即“基因反转网络”的设计是应对连续信息(图像)而不是离散数据(文本),因此,大多数工作都基于三种可能的选择,即Gumbel-软性区分、强化学习和修改的培训目标。本调查审查了所有替代方法,因为它们提出了使用对抗性技术生成文本的最新方法。选定的作品取自著名的数据库,如科学指导、IEEEXplore、Springer、计算机机械协会和ArXiv,而每一项选定的工作都经过严格分析和评估,以展示其目标、方法和实验结果。