立陶宛仇恨言论分类使用深度学习方法

Eglė Kankevičiūtė, Milita Songailaitė, Bohdan Zhyhun, Justina Mandravickaitė
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引用次数: 0

摘要

网络内容的不断增加以及每个人都有机会在网上表达自己的观点,导致经常遇到社会问题:欺凌、侮辱和仇恨言论。一些在线门户网站正在采取措施制止这种情况,例如不再允许用户匿名发表评论,取消在文章下发表评论的可能性,一些门户网站还聘请了识别和消除仇恨言论的管理员。然而,考虑到大量的评论,需要相当多的人来完成这项工作。人工智能在语言技术领域的迅速发展可能是解决这一问题的办法。自动仇恨言论检测将允许管理不断增加的在线内容,因此我们报告了立陶宛语仇恨言论分类应用深度学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LITHUANIAN HATE SPEECH CLASSIFICATION USING DEEP LEARNING METHODS
The ever-increasing amount of online content and the opportunity for everyone to express their opinions online leads to frequent encounters with social problems: bullying, insults, and hate speech. Some online portals are taking steps to stop this, such as no longer allowing user-generated comments to be made anonymously, removing the possibility to comment under the articles, and some portals employ moderators who identify and eliminate hate speech. However, given the large number of comments, an appropriately large number of people are required to do this work. The rapid development of artificial intelligence in the language technology area may be the solution to this problem. Automated hate speech detection would allow to manage the ever-increasing amount of online content, therefore we report hate speech classification for Lithuanian language by application of deep learning.
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