Counterfactual Fairness in Text Classification through Robustness

Sahaj Garg, Vincent Perot, Nicole Limtiaco, Ankur Taly, Ed H. Chi, Alex Beutel
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引用次数: 209

Abstract

In this paper, we study counterfactual fairness in text classification, which asks the question: How would the prediction change if the sensitive attribute referenced in the example were different? Toxicity classifiers demonstrate a counterfactual fairness issue by predicting that "Some people are gay" is toxic while "Some people are straight" is nontoxic. We offer a metric, counterfactual token fairness (CTF), for measuring this particular form of fairness in text classifiers, and describe its relationship with group fairness. Further, we offer three approaches, blindness, counterfactual augmentation, and counterfactual logit pairing (CLP), for optimizing counterfactual token fairness during training, bridging the robustness and fairness literature. Empirically, we find that blindness and CLP address counterfactual token fairness. The methods do not harm classifier performance, and have varying tradeoffs with group fairness. These approaches, both for measurement and optimization, provide a new path forward for addressing fairness concerns in text classification.
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基于鲁棒性的文本分类中的反事实公平性
本文研究了文本分类中的反事实公平性问题,即当样本中引用的敏感属性不同时,预测结果会发生怎样的变化?毒性分类器通过预测“有些人是同性恋”是有毒的,而“有些人是异性恋”是无毒的,证明了一个反事实的公平问题。我们提供了一个度量,反事实令牌公平性(CTF),用于测量文本分类器中的这种特定形式的公平性,并描述了它与群体公平性的关系。此外,我们提供了盲目性、反事实增强和反事实逻辑配对(CLP)三种方法,用于在训练期间优化反事实令牌公平性,弥合鲁棒性和公平性文献。实证研究发现盲目性和CLP解决了反事实令牌公平问题。这些方法不会损害分类器的性能,并且在组公平性方面有不同的权衡。这些度量和优化方法为解决文本分类中的公平性问题提供了一条新的途径。
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