一种改进的情感分析方法来检测Twitter上的激进内容

Kamel Ahsene Djaballah, K. Boukhalfa, Omar Boussaïd, Yassine Ramdane
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引用次数: 0

摘要

社交网络被恐怖组织和支持他们的人用来宣传他们的思想、意识形态或教义,并分享他们对恐怖主义的看法。为了分析与恐怖主义相关的推文,文献中提出了几项研究。有些工作依赖于数据挖掘算法;其他人则使用基于词典或机器学习的情感分析。最近的一些作品采用了多种技术相结合的其他方法。本文提出了一种改进的方法来分析Twitter上与恐怖活动相关的激进内容的情绪。与其他解决方案不同,所提出的方法侧重于使用加权术语字典、Word2vec方法和三元组,并基于模糊逻辑进行分类。作者对600条手动注释的推文和20万条自动收集的英语和阿拉伯语推文进行了实验,以评估这种方法。实验结果表明,新技术的径向检测精度为75% ~ 78%,径向度检测精度为61% ~ 64%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Sentiment Analysis Approach to Detect Radical Content on Twitter
Social networks are used by terrorist groups and people who support them to propagate their ideas, ideologies, or doctrines and share their views on terrorism. To analyze tweets related to terrorism, several studies have been proposed in the literature. Some works rely on data mining algorithms; others use lexicon-based or machine learning sentiment analysis. Some recent works adopt other methods that combine multi-techniques. This paper proposes an improved approach for sentiment analysis of radical content related to terrorist activity on Twitter. Unlike other solutions, the proposed approach focuses on using a dictionary of weighted terms, the Word2vec method, and trigrams, with a classification based on fuzzy logic. The authors have conducted experiments with 600 manually annotated tweets and 200,000 automatically collected tweets in English and Arabic to evaluate this approach. The experimental results revealed that the new technique provides between 75% to 78% of precision for radicality detection and 61% to 64% to detect radicality degrees.
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