A Literature Review : Enhancing Sentiment Analysis of Deep Learning Techniques Using Generative AI Model

Sharma Vishalkumar Sureshbhai, Dr. Tulsidas Nakrani
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Abstract

Sentiment analysis is possibly one of the most desirable areas of study within Natural Language Processing (NLP). Generative AI can be used in sentiment analysis through the generation of text that reflects the sentiment or emotional tone of a given input. The process typically involves training a generative AI model on a large dataset of text examples labeled with sentiments (positive, negative, neutral, etc.). Once trained, the model can generate new text based on the learned patterns, providing an automated way to analyze sentiments in user reviews, comments, or any other form of textual data. The main goal of this research topic is to identify the emotions as well as opinions of users or customers using textual means. Though a lot of research has been done in this area using a variety of models, sentiment analysis is still regarded as a difficult topic with a lot of unresolved issues. Slang terms, novel languages, grammatical and spelling errors, etc. are some of the current issues. This work aims to conduct a review of the literature by utilizing multiple deep learning methods on a range of data sets. Nearly 21 contributions, covering a variety of sentimental analysis applications, are surveyed in the current literature study. Initially, the analysis looks at the kinds of deep learning algorithms that are being utilized and tries to show the contributions of each work. Additionally, the research focuses on identifying the kind of data that was used. Additionally, each work's performance metrics and setting are assessed, and the conclusion includes appropriate research gaps and challenges. This will help in identifying the non-saturated application for which sentimental analysis is most needed in future studies.
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文献综述:利用生成式人工智能模型加强深度学习技术的情感分析
情感分析可能是自然语言处理(NLP)中最值得研究的领域之一。生成式人工智能可用于情感分析,生成反映给定输入的情感或情绪基调的文本。这一过程通常包括在标有情感(积极、消极、中性等)的大型文本示例数据集上训练生成式人工智能模型。训练完成后,模型就可以根据学习到的模式生成新的文本,从而为分析用户评论、意见或任何其他形式的文本数据中的情感提供一种自动化的方法。本研究课题的主要目标是利用文本手段识别用户或客户的情绪和观点。尽管人们在这一领域使用各种模型进行了大量研究,但情感分析仍被视为一个困难的课题,有许多问题尚未解决。俚语、新颖语言、语法和拼写错误等都是当前的一些问题。这项工作旨在通过在一系列数据集上使用多种深度学习方法,对文献进行综述。在当前的文献研究中,调查了近 21 篇文献,涵盖了各种情感分析应用。首先,分析考察了正在使用的深度学习算法的种类,并试图展示每一项工作的贡献。此外,研究重点还在于确定所使用的数据种类。此外,还对每个作品的性能指标和设置进行了评估,结论包括适当的研究差距和挑战。这将有助于确定未来研究中最需要情感分析的非饱和应用。
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