Measuring Geographic Performance Disparities of Offensive Language Classifiers

Brandon Lwowski, P. Rad, Anthony Rios
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引用次数: 3

Abstract

Text classifiers are applied at scale in the form of one-size-fits-all solutions. Nevertheless, many studies show that classifiers are biased regarding different languages and dialects. When measuring and discovering these biases, some gaps present themselves and should be addressed. First, “Does language, dialect, and topical content vary across geographical regions?” and secondly “If there are differences across the regions, do they impact model performance?”. We introduce a novel dataset called GeoOLID with more than 14 thousand examples across 15 geographically and demographically diverse cities to address these questions. We perform a comprehensive analysis of geographical-related content and their impact on performance disparities of offensive language detection models. Overall, we find that current models do not generalize across locations. Likewise, we show that while offensive language models produce false positives on African American English, model performance is not correlated with each city’s minority population proportions. Warning: This paper contains offensive language.
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侮辱性语言分类器地域表现差异的测量
文本分类器以一刀切的解决方案的形式在规模上应用。然而,许多研究表明,分类器对不同的语言和方言是有偏见的。在测量和发现这些偏差时,会出现一些差距,应该加以解决。第一,“语言、方言和主题内容是否因地理区域而异?”第二,“如果不同地区之间存在差异,它们会影响模型的性能吗?”为了解决这些问题,我们引入了一个名为GeoOLID的新数据集,其中包含15个地理和人口结构不同的城市的14000多个示例。我们对地理相关内容及其对攻击性语言检测模型性能差异的影响进行了全面分析。总的来说,我们发现当前的模型不能在不同的地点进行推广。同样,我们表明,虽然攻击性语言模型对非裔美国人英语产生误报,但模型的表现与每个城市的少数民族人口比例无关。警告:本文含有冒犯性语言。
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