Text Classification Using Deep Learning Models: A Comparative Review

None Muhammad Zulqarnain, None Rubab Sheikh, None Shahid Hussain, None Muhammad Sajid, None Syed Naseem Abbas, None Muhammad Majid, None Ubaid Ullah
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Abstract

With the fast popularization and continued development of web pages on the Internet, text classification has become a very serious problem in organizing and managing large amounts of digital text data in documents. The deep learning approaches have been applied in several areas of text classification with comparative and outstanding results. In this article, we analyzed and gave comprehensive reviews of the different deep learning models for text classification tasks. Based on the literature review survey, this paper addresses three various deep learning models and declares their gaps and limitations. We have evaluated the various classification applications and a small discussion on the available Deep Neural Networks (DNN) frameworks for the implementation of text datasets. The work presents guidance for future research to regulate more significance that can be distributed for the better area of this research. In summary, our study presented the main implications, identified potential directions for future research, and highlighted the challenges within this specific research field. Additionally, our aim is to acquaint readers with the various subtasks and relevant literature related to the text classification process. By engaging with our discussion, we aspire to inspire readers to explore novel and enhanced techniques for text classification, applicable across diverse domains.
使用深度学习模型的文本分类:比较回顾
随着互联网上网页的快速普及和不断发展,文本分类已经成为组织和管理文档中大量数字文本数据的一个非常重要的问题。深度学习方法已经应用于文本分类的几个领域,并取得了比较突出的成果。在本文中,我们分析并全面回顾了用于文本分类任务的不同深度学习模型。在文献综述的基础上,本文阐述了三种不同的深度学习模型,并指出了它们的差距和局限性。我们评估了各种分类应用,并对用于实现文本数据集的可用深度神经网络(DNN)框架进行了小讨论。本研究为今后的研究提供了指导,以规范本研究的更好领域,具有更大的意义。总之,我们的研究提出了主要意义,确定了未来研究的潜在方向,并强调了这一特定研究领域的挑战。此外,我们的目的是让读者熟悉与文本分类过程相关的各种子任务和相关文献。通过参与我们的讨论,我们渴望激励读者探索适用于不同领域的新颖和增强的文本分类技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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