Proceedings of the Conference Recent Advances in Natural Language Processing - Large Language Models for Natural Language Proce 2023
DOI: 10.26615/978-954-452-092-2_119
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Measuring Gender Bias in Natural Language Processing: Incorporating Gender-Neutral Linguistic Forms for Non-Binary Gender Identities in Abusive Speech Detection

Nasim Sobhani,
Kinshuk Sengupta,
Sarah Jane Delany

Abstract: Predictions from Machine Learning models can reflect bias in the data on which they are trained. Gender bias has been shown to be prevalent in Natural Language Processing models. The research into identifying and mitigating gender bias in these models predominantly considers gender as binary, male and female, neglecting the fluidity and continuity of gender as a variable.In this paper, we present an approach to evaluate gender bias in a prediction task, which recognises the non-binary nature of gender. We gend… Show more

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