Looking Behind the Mask: A framework for Detecting Character Assassination via Troll Comments on Social media using Psycholinguistic Tools

A. Marouf, Rasif Ajwad, Adnan Ferdous Ashrafi
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引用次数: 8

Abstract

With the facilities of social media platforms like Facebook, Twitter, Google+, YouTube etc. people are capable of expressing their views & news, sharing moments via photos, liking, commenting and sharing others posts. The online social networks (OSNs) are not only giving positive supports to its users, but also creating opportunities to assassin personals by the trolls. Trolls are usually the OSN users who try to hide themselves while doing bad comments, false accusations, starting controversies, spreading fake news or rumors which could be considered as character assassination of individuals. The online behavior of an OSN user could be tracked via his/her digital footprints. Though tracking huge number of users who are generating billions of textual and image data every day, could be considered as a challenging task. In this paper, we have proposed a novel detection system for identifying character assassination from social media platforms. The proposed method first predicts the personality traits using users' textual data. Therefore, LIWC, SlangNet, SentiWordNet, SentiStrength, Colloquial WordNet has been utilized as psycholinguistic tool. LIWC-based feature engineering has been performed on the comments of the trolls as well as the victim user. SlangNet and Colloquial WordNet is used for detecting English slang words in the comments as it is evident that slangs are the basic communicative way to defame someone.
看面具背后:一个使用心理语言学工具通过社交媒体上的巨魔评论来检测人格暗杀的框架
借助Facebook, Twitter, Google+, YouTube等社交媒体平台,人们能够表达自己的观点和新闻,通过照片分享朋友圈,点赞,评论和分享他人的帖子。网络社交网络(OSNs)在为用户提供积极支持的同时,也为网络喷子攻击个人创造了机会。Trolls通常是指那些试图隐藏自己的OSN用户,他们会发表不良评论、虚假指控、引发争议、散布虚假新闻或谣言,这些行为可以被视为对个人的人格攻击。OSN用户的在线行为可以通过他/她的数字足迹被跟踪。尽管跟踪每天产生数十亿文本和图像数据的大量用户可能被认为是一项具有挑战性的任务。在本文中,我们提出了一种新的检测系统来识别社交媒体平台上的人物暗杀。该方法首先利用用户文本数据预测个性特征。因此,LIWC、SlangNet、SentiWordNet、SentiStrength、colloial WordNet已被用作心理语言学工具。基于liwc的特征工程已经对喷子和受害用户的评论进行了处理。SlangNet和Colloquial WordNet用于检测评论中的英语俚语,因为很明显,俚语是诋毁某人的基本交际方式。
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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