Survey on Latest Advances in Natural Language Processing Applications of Generative Adversarial Networks

Canan Koç, Fatih Özyurt, Lazsla Barna Iantovics
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Abstract

Data mining and natural language processing (NLP) are fundamental fields that interact in many ways. Text mining shares many topics, such as sentiment analysis and content understanding. Combining these two fields enables more efficient mining of text data and the extraction of valuable information. In particular, the GAN (Generative Adversarial Network) architecture has achieved success in image generation and has started to be used on text data. However, training GANs is fraught with difficulties due to the complexity of text data. Linguistic studies show important differences between languages. Language is characterized by fluidity, ambiguity, and context‐sensitive interpretations, and text‐generating GAN models can struggle to deal with these complexities. The interaction between data quality, language structure, and complex interpretation can lead to inconsistency and ambiguity in the text production of GAN models. These problems are particularly pronounced when complexities such as semantic subtleties, idiomatic expressions, and context‐dependent usages come into play. Text generation is an area of GAN models used in NLP to generate language and enrich text‐based applications. Work in this area can contribute to analyzing, classifying, and processing text data. Many methods and techniques have been proposed to improve the performance of text GANs. However, some problems may be encountered in the optimization of these methods. Therefore, it is essential to use optimized methods. In conclusion, GANs can be an important tool to improve text generation in NLP. Still, they require continuous research and innovation to deal with factors such as language complexity and data quality.
生成式对抗网络的自然语言处理应用最新进展概览
数据挖掘和自然语言处理(NLP)是以多种方式相互作用的基本领域。文本挖掘共享许多主题,如情感分析和内容理解。结合这两个字段可以更有效地挖掘文本数据并提取有价值的信息。特别是GAN(生成对抗网络)架构在图像生成方面取得了成功,并开始用于文本数据。然而,由于文本数据的复杂性,训练gan充满了困难。语言学研究显示了语言之间的重要差异。语言的特点是流动性、模糊性和上下文敏感的解释,而文本生成GAN模型很难处理这些复杂性。数据质量、语言结构和复杂解释之间的相互作用可能导致GAN模型文本生成中的不一致和歧义。当语义的微妙性、习惯表达和上下文相关的用法等复杂性开始发挥作用时,这些问题尤其明显。文本生成是NLP中使用的GAN模型的一个领域,用于生成语言和丰富基于文本的应用程序。这一领域的工作有助于分析、分类和处理文本数据。为了提高文本gan的性能,人们提出了许多方法和技术。然而,在这些方法的优化过程中可能会遇到一些问题。因此,使用优化的方法是必要的。总之,gan可以成为改进NLP中文本生成的重要工具。尽管如此,它们仍需要持续的研究和创新,以应对语言复杂性和数据质量等因素。
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