授权检测恶意社交机器人和内容垃圾邮件在推特上的情感分析

IF 0.6 Q4 STATISTICS & PROBABILITY Electronic Journal of Applied Statistical Analysis Pub Date : 2020-10-14 DOI:10.1285/I20705948V13N2P375
Farideh Tavazoee, D. Buscaldi, F. Mola, C. Conversano
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引用次数: 0

摘要

近年来,Twitter作为一个分享观点的平台的作用越来越大,尤其是自从政治家、演艺界人士和其他有影响力的人广泛使用Twitter与公众交流以来。由于这些原因,使用社交机器人来操纵信息和影响人们的观点也越来越多。在本文中,我们使用监督分类模型来区分Twitter上的机器人和合法用户。更具体地说,我们展示了情感特征在机器人-人类账户检测中的重要性。此外,我们通过测试俄罗斯机器人账户来评估我们的检测模型,这些账户是Twitter上出现的最新一组社交机器人,以表明这些技术可能很容易适用于新的、看不见的社交机器人类型。
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Empowering Detection of Malicious Social Bots and Content Spammers on Twitter by Sentiment Analysis
The role of Twitter as a platform to share opinions has been growing in the recent years especially since it has been widely used by public personae such as politicians, personalities of the show business, and other influencers to communicate with the public. For these reasons, the use of social bots to manipulate information and influence people's opinions is also growing. In this paper, we use a supervised classification model to distinguish bots from legitimate users on Twitter. More specifically, we show the importance of sentiment features in bot-human account detection. Moreover, we evaluate our detection model by testing on Russian bot accounts who are the most recent set of social bots that appeared on Twitter to show that these techniques may be easily adapted to work on new, unseen types of social bots.
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CiteScore
1.40
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14.30%
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