Unintended Bias in Misogyny Detection

Debora Nozza, Claudia Volpetti, E. Fersini
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引用次数: 62

Abstract

During the last years, the phenomenon of hate against women increased exponentially especially in online environments such as microblogs. Although this alarming phenomenon has triggered many studies both from computational linguistic and machine learning points of view, less effort has been spent to analyze if those misogyny detection models are affected by an unintended bias. This can lead the models to associate unreasonably high misogynous scores to a non-misogynous text only because it contains certain terms, called identity, terms. This work is the first attempt to address the problem of measuring and mitigating unintended bias in machine learning models trained for the misogyny detection task. We propose a novel synthetic test set that can be used as evaluation framework for measuring the unintended bias and different mitigation strategies specific for this task. Moreover, we provide a misogyny detection model that demonstrate to obtain the best classification performance in the state-of-the-art. Experimental results on recently introduced bias metrics confirm the ability of the bias mitigation treatment to reduce the unintended bias of the proposed misogyny detection model. CCS CONCEPTS • Social and professional topics $\rightarrow$ Hate speech; • Computing methodologies $\rightarrow$ Neural networks.
厌女症检测中的意外偏见
在过去几年中,针对女性的仇恨现象呈指数级增长,尤其是在微博等网络环境中。尽管这一令人担忧的现象从计算语言学和机器学习的角度引发了许多研究,但很少有人花时间分析这些厌女症检测模型是否受到意外偏见的影响。这可能导致模型将不合理的高厌女分数与非厌女文本联系起来,仅仅因为它包含某些术语,称为身份,术语。这项工作是第一次尝试解决为厌女症检测任务而训练的机器学习模型中测量和减轻意外偏见的问题。我们提出了一种新的综合测试集,可作为评估框架,用于测量非预期偏差和针对该任务的不同缓解策略。此外,我们还提供了一个厌女症检测模型,该模型证明可以获得最先进的分类性能。最近引入的偏见度量的实验结果证实了偏见缓解处理能够减少所提出的厌女症检测模型的意外偏见。•社会和专业话题$\右拐$仇恨言论;•计算方法:神经网络。
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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