Content Mining Techniques for Detecting Cyberbullying in Social Media

Shawniece L Parker, Y. Hu
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Abstract

The use of social media has become an increasingly popular trend, and it is most favorite amongst teenagers. A major problem concerning teens using social media is that they are often unaware of the dangers involved when using these media. Also, teenagers are more inclined to misuse social media because they are often unaware of the privacy rights associated with the use of that particular media, or the rights of the other users. As a result, cyberbullying cases have a steady rise in recent years and have gone undiscovered, or are not discovered until serious harm has been caused to the victims. This study aims to create an effective algorithm that can be used to detect cyberbullying in social media using content mining. Bullies may not use only one social media to victimize other users. Therefore, the proposed algorithm must detect whether or not a user is victimizing someone through one or more social media accounts, then determine which social media accounts are being used to carry out the victimization. To achieve this goal, the algorithm will collect information from content shared by the users in all of their social media accounts, then will determine which content to extract based on a big data technology involving phrases or words that might be used by cyberbullies. Any extracted data will reveal some insight into whether or not cyberbullying is occurring and trigger appropriate approaches to handle it.
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社交媒体中网络欺凌检测的内容挖掘技术
使用社交媒体已经成为一种日益流行的趋势,在青少年中最受欢迎。青少年使用社交媒体的一个主要问题是,他们在使用这些媒体时往往没有意识到其中的危险。此外,青少年更倾向于滥用社交媒体,因为他们往往不知道与使用特定媒体相关的隐私权,或者其他用户的权利。因此,网络欺凌案件近年来稳步上升,并且没有被发现,或者直到对受害者造成严重伤害才被发现。本研究旨在创建一种有效的算法,可用于使用内容挖掘来检测社交媒体中的网络欺凌。欺凌者可能不会只使用一种社交媒体来伤害其他用户。因此,所提出的算法必须检测用户是否通过一个或多个社交媒体帐户伤害他人,然后确定哪些社交媒体帐户被用于实施伤害。为了实现这一目标,该算法将从用户在所有社交媒体账户中分享的内容中收集信息,然后根据一项涉及可能被网络欺凌者使用的短语或单词的大数据技术,决定提取哪些内容。任何提取的数据都将揭示网络欺凌是否正在发生,并引发适当的处理方法。
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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