基于支持向量机的网络欺凌水平分析

Ngurah Indra, Purnayasa, Made Agus, Dwi Suarjaya, I. Putu, Arya Dharmaadi
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引用次数: 1

摘要

印尼的互联网用户每年都在增加。这一增长是由几个因素造成的,比如印尼互联网基础设施的分布越来越均匀。互联网有积极的影响,如促进个人之间的交流,而互联网的负面影响是对某人的恐吓或被称为网络欺凌。网络欺凌对心理健康有着巨大的影响,导致受害者愤怒、抑郁和焦虑。本研究旨在使用TF-IDF和支持向量机来衡量印度尼西亚在Twitter上的网络欺凌水平。本研究的分类分为两类,即网络欺凌和非网络欺凌。本研究使用的Twitter数据为3,344,782条推文,网络欺凌分类水平为34.59%,非网络欺凌分类水平为65.41%。获得的最佳准确度值为85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Cyberbullying Level using Support Vector Machine Method
Internet users in Indonesia is increasing in every year. The increase caused by several factors, such as the increasingly even distribution of internet infrastructure in Indonesia. The internet has a positive impact such as facilitating communication between individuals, while the negative impact of the internet is intimidation to someone or known as cyberbullying. Cyberbullying has a huge impact on mental health person, causing victim to be angry, depressed, and anxious. This research aims to measure the level of cyberbullying in Indonesia on Twitter using TF-IDF and Support Vector Machine. Classification in this study is classified into two classes, namely cyberbullying and non-cyberbullying. Twitter data used in this study were 3,344,782 tweets that resulted in a cyberbullying classification level of 34.59% and a non-cyberbullying classification level of 65.41%. The best accuracy value obtained is 85%. 
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