FLAC: Fairness-Aware Representation Learning by Suppressing Attribute-Class Associations.

Ioannis Sarridis, Christos Koutlis, Symeon Papadopoulos, Christos Diou
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Abstract

Bias in computer vision systems can perpetuate or even amplify discrimination against certain populations. Considering that bias is often introduced by biased visual datasets, many recent research efforts focus on training fair models using such data. However, most of them heavily rely on the availability of protected attribute labels in the dataset, which limits their applicability, while label-unaware approaches, i.e., approaches operating without such labels, exhibit considerably lower performance. To overcome these limitations, this work introduces FLAC, a methodology that minimizes mutual information between the features extracted by the model and a protected attribute, without the use of attribute labels. To do that, FLAC proposes a sampling strategy that highlights underrepresented samples in the dataset, and casts the problem of learning fair representations as a probability matching problem that leverages representations extracted by a bias-capturing classifier. It is theoretically shown that FLAC can indeed lead to fair representations, that are independent of the protected attributes. FLAC surpasses the current state-of-the-art on Biased-MNIST, CelebA, and UTKFace, by 29.1%, 18.1%, and 21.9%, respectively. Additionally, FLAC exhibits 2.2% increased accuracy on ImageNet-A and up to 4.2% increased accuracy on Corrupted-Cifar10. Finally, in most experiments, FLAC even outperforms the bias label-aware state-of-the-art methods.

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FLAC:通过抑制属性-类别关联进行公平感知表征学习。
计算机视觉系统中的偏见会延续甚至扩大对某些人群的歧视。考虑到有偏见的视觉数据集通常会带来偏见,最近的许多研究工作都集中在使用此类数据训练公平模型上。然而,其中大多数研究都严重依赖于数据集中受保护属性标签的可用性,这限制了它们的适用性,而标签感知方法,即在没有此类标签的情况下运行的方法,则表现出相当低的性能。为了克服这些限制,这项工作引入了 FLAC,这是一种在不使用属性标签的情况下最小化模型提取的特征与受保护属性之间的互信息的方法。为此,FLAC 提出了一种采样策略,以突出数据集中代表性不足的样本,并将学习公平表征的问题视为一个概率匹配问题,利用偏差捕捉分类器提取的表征。从理论上讲,FLAC 的确可以产生独立于受保护属性的公平表征。在 Biased-MNIST、CelebA 和 UTKFace 上,FLAC 分别以 29.1%、18.1% 和 21.9% 的优势超越了当前最先进的水平。此外,FLAC 在 ImageNet-A 上的准确率提高了 2.2%,在 Corrupted-Cifar10 上的准确率提高了 4.2%。最后,在大多数实验中,FLAC 的表现甚至超过了最先进的偏差标签感知方法。
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