尼泊尔社交媒体中的攻击性语言检测

Nobal B. Niraula, S. Dulal, Diwa Koirala
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引用次数: 7

摘要

博客文章、评论和推特等社交媒体文本经常包含攻击性语言,包括种族仇恨言论、人身攻击和性骚扰。因此,检测语言的不当使用对于用户的安全以及压制仇恨行为和侵略都是至关重要的。解决这个问题的现有方法大多适用于资源丰富的语言,如英语和德语。在本文中,我们描述了尼泊尔语中的攻击性语言,这是一种低资源语言,突出了处理尼泊尔社交媒体文本需要解决的挑战。我们还提出了使用监督机器学习检测攻击性语言的实验。除了提供第一个检测尼泊尔语冒犯性语言的基线方法外,我们还发布了人类注释数据集,以鼓励未来对这一关键主题的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Offensive Language Detection in Nepali Social Media
Social media texts such as blog posts, comments, and tweets often contain offensive languages including racial hate speech comments, personal attacks, and sexual harassment. Detecting inappropriate use of language is, therefore, of utmost importance for the safety of the users as well as for suppressing hateful conduct and aggression. Existing approaches to this problem are mostly available for resource-rich languages such as English and German. In this paper, we characterize the offensive language in Nepali, a low-resource language, highlighting the challenges that need to be addressed for processing Nepali social media text. We also present experiments for detecting offensive language using supervised machine learning. Besides contributing the first baseline approaches of detecting offensive language in Nepali, we also release human annotated data sets to encourage future research on this crucial topic.
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