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Identifying Suspected Cybermob on Tieba

机译:在铁巴上识别可疑的网络暴民

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摘要

This paper describes an approach to identify suspected cybermob on social media. Many researches involve making predictions of group emotion on Internet (such as quantifying sentiment polarity), but this paper instead focuses on the origin of information diffusion, namely back to its makers and contributors. According our previous findings that have shown, at the level of Tieba's contents, the negative information or emotions spread faster than positive ones, we centre on the maker of negative message in this paper, so-called cybermobs who post aggressive, provocative or insulting remarks on social websites. We explore the different characteristics between suspected cybermobs and general netizens and then extract relative unique features of suspected cybermobs. We construct real system to identify suspected cybermob automatically using machine learning method with above features, including other common features like user/content-based ones. Empirical results show that our approach can detect suspected cybermob correctly and efficiently as we evaluate it with benchmark models, and apply it to actual cases.
机译:本文介绍了一种在社交媒体上识别可疑网络暴徒的方法。许多研究都涉及对互联网上的集体情感进行预测(例如量化情感极性),但本文主要关注信息传播的起源,即回到信息的传播者和贡献者。根据我们先前的发现,在铁巴的内容层面上,负面信息或情绪的传播速度比正面消息或情绪的传播速度快,我们将重点放在负面消息的产生者上,即所谓的网络暴民,他们发表攻击性,挑衅性或侮辱性言论在社交网站上。我们探索了可疑的网络暴民和普通网民之间的不同特征,然后提取了可疑的网络暴民的相对独特特征。我们使用具有上述功能的机器学习方法(包括其他常见功能,如基于用户/内容的功能),构建用于自动识别可疑网络暴徒的真实系统。实证结果表明,当我们使用基准模型对其进行评估并将其应用于实际案例时,我们的方法可以正确,有效地检测可疑的网络暴民。

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