Opinion Mining in Arabic Extremism Texts: A Systematic Literature Review

Ali Abbas Hadi Al-Shukrawi, Layla safwat Jamil, Israa Akram Alzuabidi, Ahmed Salman Al-Gamal, S. A. M. Noah, Mohammed Kamrul Hasan, S. M. Al-Ghuribi, Rabiu Aliyu, Zainab Kadhim Jabal, A. A. Ahmed
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Abstract

In this paper, a systematic literature review was provided that investigated the present evidence regarding extremist words in Arabic opinion mining methods. This study aimed to perform a Systematic Literature Review (SLR) in order to detect, evaluate, and synthesize the existing evidence regarding opinion mining techniques for extremist Arabic text. From the SLR, it is evident that opinion-mining techniques have several opportunities for detecting extremism in the Arabic text. Over the past few years, multimedia sentiment analysis has gained traction as visual content is becoming more incorporated into social media networking. Opinion mining is the process of identifying, extracting, and categorizing views about anything. It is a sort of Natural Language Processing (NLP) used to track public sentiment about a certain law, policy, or marketing, for example. It entails the creation of a method for collecting and analyzing comments and opinions concerning legislation, regulations, policies, and so on that are posted on social media. The process of information extraction is critical since it is both a beneficial tool and a difficult undertaking. In this article, we have examined the recent and advanced methodologies to extract sentiment from a web-wide item, opinion-mining methods must be automated. Also, we have analyzed the novel Artificial Intelligence and lexical-based algorithms for sentiment analysis. These methodologies find better applications in the customer feedback analysis of any organization.
阿拉伯语极端主义文本中的意见挖掘:系统性文献综述
本文提供的系统文献综述调查了阿拉伯语舆情挖掘方法中有关极端主义词汇的现有证据。本研究旨在进行系统性文献综述(SLR),以检测、评估和综合有关阿拉伯语极端主义文本舆情挖掘技术的现有证据。从系统文献综述中可以看出,舆情挖掘技术在检测阿拉伯语文本中的极端主义方面有多种机会。在过去几年中,随着可视化内容越来越多地融入社交媒体网络,多媒体情感分析得到了越来越多的关注。舆情挖掘是对任何事物的观点进行识别、提取和分类的过程。它是一种自然语言处理(NLP),用于跟踪公众对某项法律、政策或营销等的看法。它需要创建一种方法,用于收集和分析在社交媒体上发布的有关立法、法规、政策等方面的评论和意见。信息提取过程至关重要,因为它既是一项有益的工具,也是一项艰巨的任务。在这篇文章中,我们研究了从全网项目中提取情感的最新和先进方法,意见挖掘方法必须是自动化的。此外,我们还分析了用于情感分析的新型人工智能和基于词法的算法。这些方法可以更好地应用于任何组织的客户反馈分析。
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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