使用NLP和机器学习方法在社交网站上发现有害评论

Esha Bansal, N. Bansal
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引用次数: 0

摘要

由于社交媒体和网络,暴力语言的使用显著增加。其中一个关键因素是年轻一代。使用社交媒体的年轻人中,有一半以上受到网络欺凌的影响。有害的互动是由于在社交网站上表达的侮辱而发生的。这些评论在互联网上形成了一种不专业的语气,通常可以通过被动的机制和技术来理解和缓解。此外,目前将侮辱检测与机器学习和自然语言处理相结合的系统的召回率非常低。为了为这些概念建立一个可行的分类方案,本研究通过检查和测试各种方法来分析如何识别书面欺凌。我们提出了一种有效的方法来评估欺凌,识别攻击性评论,并分析其真实性。使用NLP和机器学习来检查社会感知并确定对个人或群体的侵略性影响。在社交媒体中识别网络危险的理想原型系统在很大程度上依赖于一个有效的分类器。本文的目的是强调学习策略在提高自然语言处理效率方面的关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding Harmful Comments on Social Networking Sites Using NLP and Machine Learning Methods
The usage of violent language has significantly increased due to social media and networking. A key component in this is the younger generation. More than half of young people who use social media are affected by cyberbullying. Harmful interactions occur as a result of insults expressed on social net-working websites. These comments foster an unprofessional tone on the internet, which is usually un-derstood and mitigated through passive mechanisms and techniques. Additionally, the recall rates of current systems that combine insult detection with machine learning and natural language processing are incredibly poor. To establish a viable classification scheme for such concepts, the research ana-lyzes how to identify bullying in writing by examining and testing various approaches. We propose an effective method to assess bullying, identify aggressive comments, and analyze their veracity. NLP and machine learning are employed to examine social perception and identify the aggressive impact on in-dividuals or groups. The ideal prototyping system for identifying cyber dangers in social media relies heavily on an efficient classifier. The goal of the paper is to emphasize the critical role that learning strategies play in enhancing natural language processing efficiency.
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