跨保护组使用名称差异表进行偏差检测

Elhanan Mishraky, Aviv Ben Arie, Yair Horesh, Shir Meir Lador
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引用次数: 2

摘要

随着基于人工智能的模型在我们的生活中扮演越来越重要的角色,对公平的关注也越来越重要。近年来,越来越多的证据表明,人工智能模型是多么容易受到偏见的影响,以及在检测和缓解方面所面临的挑战。我们的贡献有三方面。首先,我们收集受保护群体的名字差异表,使我们能够估计敏感属性(性别、种族)。使用这些估计,我们计算偏差指标给定的分类模型的预测。我们只利用姓名/邮政编码;因此,我们的方法是模型和特征不可知的。其次,我们提供了一个开源的Python包,它可以根据我们的方法生成偏差检测报告。最后,我们证明,老年人的名字是更好的预测种族和性别,双姓是一个合理的预测性别。我们在公开可用的数据集(美国国会)和分类器(COMPAS)上测试了我们的方法,发现它与它们一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bias detection by using name disparity tables across protected groups

As AI-based models take an increasingly central role in our lives, so does the concern for fairness. In recent years, mounting evidence reveals how vulnerable AI models are to bias and the challenges involved in detection and mitigation. Our contribution is three-fold. Firstly, we gather name disparity tables across protected groups, allowing us to estimate sensitive attributes (gender, race). Using these estimates, we compute bias metrics given a classification model’s predictions. We leverage only names/zip codes; hence, our method is model and feature agnostic. Secondly, we offer an open-source Python package that produces a bias detection report based on our method. Finally, we demonstrate that names of older individuals are better predictors of race and gender and that double surnames are a reasonable predictor of gender. We tested our method on publicly available datasets (US Congress) and classifiers (COMPAS) and found it to be consistent with them.

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来源期刊
Journal of responsible technology
Journal of responsible technology Information Systems, Artificial Intelligence, Human-Computer Interaction
CiteScore
3.60
自引率
0.00%
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0
审稿时长
168 days
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