HeteroCorpus: A Corpus for Heteronormative Language Detection

Juan Vásquez, G. Bel-Enguix, Scott Andersen, Sergio-Luis Ojeda-Trueba
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引用次数: 2

Abstract

In recent years, plenty of work has been done by the NLP community regarding gender bias detection and mitigation in language systems. Yet, to our knowledge, no one has focused on the difficult task of heteronormative language detection and mitigation. We consider this an urgent issue, since language technologies are growing increasingly present in the world and, as it has been proven by various studies, NLP systems with biases can create real-life adverse consequences for women, gender minorities and racial minorities and queer people. For these reasons, we propose and evaluate HeteroCorpus; a corpus created specifically for studying heterononormative language in English. Additionally, we propose a baseline set of classification experiments on our corpus, in order to show the performance of our corpus in classification tasks.
异质语料库:异质规范语言检测的语料库
近年来,NLP社区在语言系统中的性别偏见检测和缓解方面做了大量的工作。然而,据我们所知,还没有人关注异规范语言检测和缓解的艰巨任务。我们认为这是一个紧迫的问题,因为语言技术在世界上越来越普遍,正如各种研究证明的那样,带有偏见的NLP系统会给女性、性别少数群体、种族少数群体和酷儿群体带来现实生活中的不利后果。基于这些原因,我们提出并评价了HeteroCorpus;专门为研究英语中的异规范语言而创建的语料库。此外,我们在语料库上提出了一组基线分类实验,以展示我们的语料库在分类任务中的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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