Data Augmentation for Discrimination Prevention and Bias Disambiguation

Shubham Sharma, Yunfeng Zhang, J. Aliaga, Djallel Bouneffouf, Vinod Muthusamy, Kush R. Varshney
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引用次数: 54

Abstract

Machine learning models are prone to biased decisions due to biases in the datasets they are trained on. In this paper, we introduce a novel data augmentation technique to create a fairer dataset for model training that could also lend itself to understanding the type of bias existing in the dataset i.e. if bias arises from a lack of representation for a particular group (sampling bias) or if it arises because of human bias reflected in the labels (prejudice based bias). Given a dataset involving a protected attribute with a privileged and unprivileged group, we create an "ideal world'' dataset: for every data sample, we create a new sample having the same features (except the protected attribute(s)) and label as the original sample but with the opposite protected attribute value. The synthetic data points are sorted in order of their proximity to the original training distribution and added successively to the real dataset to create intermediate datasets. We theoretically show that two different notions of fairness: statistical parity difference (independence) and average odds difference (separation) always change in the same direction using such an augmentation. We also show submodularity of the proposed fairness-aware augmentation approach that enables an efficient greedy algorithm. We empirically study the effect of training models on the intermediate datasets and show that this technique reduces the two bias measures while keeping the accuracy nearly constant for three datasets. We then discuss the implications of this study on the disambiguation of sample bias and prejudice based bias and discuss how pre-processing techniques should be evaluated in general. The proposed method can be used by policy makers who want to use unbiased datasets to train machine learning models for their applications to add a subset of synthetic points to an extent that they are comfortable with to mitigate unwanted bias.
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防止歧视和消除偏见歧义的数据增强
由于所训练的数据集存在偏见,机器学习模型容易做出有偏见的决策。在本文中,我们引入了一种新的数据增强技术,为模型训练创建一个更公平的数据集,该数据集还可以帮助理解数据集中存在的偏见类型,即,如果偏见是由于缺乏对特定群体的代表而产生的(抽样偏见),或者由于标签中反映的人为偏见而产生的(基于偏见的偏见)。给定一个涉及具有特权和非特权组的受保护属性的数据集,我们创建一个“理想世界”数据集:对于每个数据样本,我们创建一个具有与原始样本相同特征(受保护属性除外)和标签的新样本,但具有相反的保护属性值。合成数据点按照与原始训练分布的接近程度排序,并依次添加到真实数据集中,形成中间数据集。我们从理论上证明了两种不同的公平概念:统计奇偶差(独立性)和平均几率差(分离)总是在相同的方向上变化。我们还展示了所提出的公平性感知增强方法的子模块性,该方法实现了高效的贪婪算法。我们对训练模型对中间数据集的影响进行了实证研究,结果表明,该技术减少了两个偏差度量,同时保持了三个数据集的精度几乎不变。然后,我们讨论了本研究对样本偏差和基于偏见的偏差消歧的影响,并讨论了如何总体上评估预处理技术。政策制定者可以使用所提出的方法,他们希望使用无偏数据集来训练机器学习模型,以便在他们满意的程度上添加合成点子集,以减轻不必要的偏差。
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