社会评论中侮辱检测的机器学习技术比较分析

Aakash K G, S. Juliet
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引用次数: 0

摘要

社交媒体用户的即时和长期健康受到网络欺凌的严重威胁。着眼于创建早期预警系统,以预测易受攻击的有害评论,我们调查了社交网络中网络欺凌的检测。网络欺凌引发的网络骚扰后果严重。要在网络环境中解决这一问题,需要具备自动检测网络欺凌和识别个人在社会互动中扮演的角色的能力。利用科技作为欺凌工具被称为网络欺凌。网络欺凌是随着科技的发展而出现的一个问题,对青少年的心理健康构成了威胁。建议建立一个框架,以提供两种不同的网络欺凌描述。网络欺凌是影响成年人和青少年的一个重要问题。绝望和自杀等错误都是由此产生的。对社交媒体平台上的内容进行监管的需求越来越大。下面的研究使用朴素贝叶斯分类器,利用Twitter的数据和基于维基百科论坛人身攻击的评论,建立了一个基于文本数据中网络欺凌识别的模型。该模型对twitter上的数据提供了90%以上的准确率,对维基百科上的数据提供了80%以上的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis of Machine-Learning Techniques for Insult Detection in Social Commentary
Social media users' immediate and long-term well-being is seriously threatened by cyberbullying. With an eye towards creating early warning systems for the anticipation of harmful comments vulnerable to attacks, we investigate the detection of cyberbullying in social networks. Online harassment disturbs by cyberbullying has grave repercussions. The ability to automatically detect cyberbullying and recognize the roles that individuals assume in social interaction is required to address this issue in online contexts. The use of technology as a bullying tool is known as cyberbullying. Cyberbullying is a problem that has arisen along with technology development and poses a risk to adolescents' psychological welfare. A framework is suggested to provide two distinct descriptions of cyberbullying. Cyberbullying is a significant issue on the internet that affects both adults and teenagers. Mistakes like despair and suicide have resulted from it. There is an increasing demand for content on social media platforms to be regulated. The following study builds a model based on the identification of cyberbullying in text data using a Naive Bayes classifier, utilizing data from Twitter and comments based on personal assaults from Wikipedia forums. The model offers accuracy levels above 90% for data from Tweets and accuracy levels above 80% for data from Wikipedia.
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