Occupational Biases in Norwegian and Multilingual Language Models

Samia Touileb, Lilja Øvrelid, Erik Velldal
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引用次数: 9

Abstract

In this paper we explore how a demographic distribution of occupations, along gender dimensions, is reflected in pre-trained language models. We give a descriptive assessment of the distribution of occupations, and investigate to what extent these are reflected in four Norwegian and two multilingual models. To this end, we introduce a set of simple bias probes, and perform five different tasks combining gendered pronouns, first names, and a set of occupations from the Norwegian statistics bureau. We show that language specific models obtain more accurate results, and are much closer to the real-world distribution of clearly gendered occupations. However, we see that none of the models have correct representations of the occupations that are demographically balanced between genders. We also discuss the importance of the training data on which the models were trained on, and argue that template-based bias probes can sometimes be fragile, and a simple alteration in a template can change a model’s behavior.
挪威语和多语言模式中的职业偏见
在本文中,我们探讨了沿性别维度的职业人口分布如何反映在预训练的语言模型中。我们对职业分布进行了描述性评估,并调查了这些分布在四种挪威语和两种多语言模型中的反映程度。为此,我们引入了一组简单的偏见探针,并执行了五项不同的任务,这些任务结合了挪威统计局的性别代词、名字和一组职业。我们表明,特定语言模型获得了更准确的结果,并且更接近于明确性别职业的真实分布。然而,我们看到,没有一个模型能正确地反映性别间人口平衡的职业。我们还讨论了训练模型所依据的训练数据的重要性,并认为基于模板的偏差探测有时是脆弱的,模板的简单更改可以改变模型的行为。
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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