Guidelines for Detecting Cyberbullying in Social Media Data Through Text Analysis

Nomandla Mkwananzi, Hanlie Smuts
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Abstract

The intensive use of the internet comes with negative and positive effects. Cyberbullying is one of the negative effects of using the internet. Cyberbullying has a negative effect on the victims emotionally, academically, and psychologically. Cyberbullying detection tools can help in reducing or eliminating cyberbullying on social media platforms. The aim of the study was to identify the elements that drive cyberbullying and build classification models to determine whether social media textual information contains cyberbullying text or not. The research aim was achieved through a mixed methods research design, containing qualitative and quantitative elements. The drivers of cyberbullying were identified through a literature review. These included age, gender, family structure, parental education, race, technology, anonymity, academic achievement, and awareness of cyber safety. The support vector machines and naïve Bayes models were used to classify the text dataset (Formspring.me dataset), with a 72.81% and a 99.87% classification accuracy, respectively.
通过文本分析检测社交媒体数据中的网络欺凌指南
互联网的密集使用带来了消极和积极的影响。网络欺凌是使用互联网的负面影响之一。网络欺凌对受害者的情感、学业和心理都有负面影响。网络欺凌检测工具可以帮助减少或消除社交媒体平台上的网络欺凌。本研究的目的是识别驱动网络欺凌的因素,并建立分类模型,以确定社交媒体文本信息是否包含网络欺凌文本。研究目的是通过包含定性和定量元素的混合方法研究设计来实现的。通过文献综述确定了网络欺凌的驱动因素。这些因素包括年龄、性别、家庭结构、父母教育程度、种族、技术、匿名性、学术成就和网络安全意识。使用支持向量机和naïve贝叶斯模型对文本数据集(Formspring)进行分类。Me数据集),分类准确率分别为72.81%和99.87%。
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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