用于检测仇恨言论的深度神经网络

Jianfeng Wang
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引用次数: 0

摘要

随着社交媒体活动的增加,互联网上的仇恨言论变得越来越普遍。这是一种基于宗教、种族或性取向针对群体或个人的互联网内容的危险和破坏性形式。因此,它引起了研究人员越来越多的关注。本文将探讨当前的研究趋势、数据来源和方法,并建议未来的研究方向。仇恨言论的主题是在2020年初确定的,它包括对少数民族、宗教、妇女、大选议程和政治的攻击。个人已经试验了各种方法和模型,并发现了满足排除要求的几个特征。然而,这些方法和特征并不意味着它们将在检测仇恨方面表现良好。数据收集、选择的特征、类别数量和相互排斥的类别都显著影响仇恨言论的分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Neural Networks for Detecting Hate Speech
With increased social media activity, hate speech on the Internet has become increasingly prevalent. It is a hazardous and damaging form of internet content that targets a group or individual based on their religion, race, or sexual orientation. As a result, it has garnered increasing attention from researchers. This article will examine current research trends, data sources, and methodologies and recommend future study directions. The subject of hate speech was determined at the start of 2020, and it includes attacks on minorities, religion, women, the general election agenda, and politics. Individuals have experimented with various methodologies and models and discovered several characteristics that fulfill the exclusion requirements. However, these methodologies and features do not imply that they will perform well in detecting hatred. The data collection, selected features, number of categories, and mutually exclusive categories all significantly impact the classification performance of hate speech.
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