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Unsupervised Discovery of Implicit Gender Bias

机译:无监督的隐性性别偏见发现

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摘要

Despite their prevalence in society, social biases are difficult to identify, primarily because human judgements in this domain can be unreliable. We take an unsupervised approach to identifying gender bias against women at a comment level and present a model that can surface text likely to contain bias. Our main challenge is forcing the model to focus on signs of implicit bias, rather than other artifacts in the data. Thus, our methodology involves reducing the influence of confounds through propensity matching and adversarial learning. Our analysis shows how biased comments directed towards female politicians contain mixed criticisms, while comments directed towards other female public figures focus on appearance and sexualization. Ultimately, our work offers a way to capture subtle biases in various domains without relying on subjective human judgements.
机译:尽管社会普遍存在,但社会偏见难以识别,主要是因为该领域的人类判断可能是不可靠的。我们采取无人监督的方法来在评论级别识别对妇女的性别偏见,并提出了一个可能含有偏见的文本的模型。我们的主要挑战是强迫模型专注于隐含偏见的迹象,而不是数据中的其他工件。因此,我们的方法涉及通过倾向匹配和对抗性学习来降低混淆的影响。我们的分析表明,针对女性政治家的偏见评论如何包含混合批评,而针对其他女性公众人物的评论专注于外观和性化。最终,我们的工作提供了一种方法,可以在不依赖主观人类判断的情况下捕捉各个域中的微妙偏见。

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