Transcending the “Male Code”: Implicit Masculine Biases in NLP Contexts

Katie Seaborn, S. Chandra, Thibault Fabre
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引用次数: 2

Abstract

Critical scholarship has elevated the problem of gender bias in data sets used to train virtual assistants (VAs). Most work has focused on explicit biases in language, especially against women, girls, femme-identifying people, and genderqueer folk; implicit associations through word embeddings; and limited models of gender and masculinities, especially toxic masculinities, conflation of sex and gender, and a sex/gender binary framing of the masculine as diametric to the feminine. Yet, we must also interrogate how masculinities are “coded” into language and the assumption of “male” as the linguistic default: implicit masculine biases. To this end, we examined two natural language processing (NLP) data sets. We found that when gendered language was present, so were gender biases and especially masculine biases. Moreover, these biases related in nuanced ways to the NLP context. We offer a new dictionary called AVA that covers ambiguous associations between gendered language and the language of VAs.
超越“男性密码”:NLP语境中的内隐男性偏见
批判性的学术研究提高了用于训练虚拟助理(VAs)的数据集中的性别偏见问题。大多数研究都集中在语言上的明显偏见,尤其是针对女性、女孩、女性认同者和性别酷儿群体的偏见;词嵌入的内隐联想;性别和男子气概的有限模型,特别是有毒的男子气概,性和性别的合并,以及性别/性别二元框架,男性与女性截然相反。然而,我们也必须质问男性气质是如何被“编码”到语言中的,以及“男性”作为语言默认值的假设:隐性的男性偏见。为此,我们研究了两个自然语言处理(NLP)数据集。我们发现,当性别语言出现时,性别偏见,尤其是男性偏见也会出现。此外,这些偏见以微妙的方式与NLP环境相关。我们提供了一个名为AVA的新词典,涵盖了性别语言和VAs语言之间的模糊关联。
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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