Man is to Person as Woman is to Location: Measuring Gender Bias in Named Entity Recognition

Ninareh Mehrabi, Thamme Gowda, Fred Morstatter, Nanyun Peng, A. Galstyan
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引用次数: 47

Abstract

In this paper, we study the bias in named entity recognition (NER) models---specifically, the difference in the ability to recognize male and female names as PERSON entity types. We evaluate NER models on a dataset containing 139 years of U.S. census baby names and find that relatively more female names, as opposed to male names, are not recognized as PERSON entities. The result of this analysis yields a new benchmark for gender bias evaluation in named entity recognition systems. The data and code for the application of this benchmark is publicly available for researchers to use.
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男人之于人,如同女人之于地点:命名实体识别中的性别偏见测量
在本文中,我们研究了命名实体识别(NER)模型中的偏差——特别是将男性和女性名字识别为PERSON实体类型的能力差异。我们在包含139年美国人口普查婴儿名字的数据集上评估了NER模型,发现相对于男性名字,更多的女性名字没有被识别为PERSON实体。这一分析的结果为命名实体识别系统中的性别偏见评估提供了一个新的基准。该基准应用程序的数据和代码是公开的,可供研究人员使用。
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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