Demographic bias mitigation at test-time using uncertainty estimation and human–machine partnership

Anoop Krishnan Upendran Nair , Ajita Rattani
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Abstract

Facial attribute classification algorithms frequently manifest demographic biases by obtaining differential performance across gender and racial groups. Existing bias mitigation techniques are mostly in-processing techniques, i.e., implemented during the classifier’s training stage, that often lack generalizability, require demographically annotated training sets, and exhibit a trade-off between fairness and classification accuracy. In this paper, we propose a technique to mitigate bias at the test time i.e., during the deployment stage, by harnessing prediction uncertainty and human–machine partnership. To this front, we propose to utilize those lowest percentages of test data samples identified as outliers with high prediction uncertainty. These identified uncertain samples at test-time are labeled by human analysts for decision rendering and for subsequently re-training the deep neural network in a continual learning framework. With minimal human involvement and through iterative refinement of the network with human guidance at test-time, we seek to enhance the accuracy as well as the fairness of the already deployed facial attribute classification algorithms. Extensive experiments are conducted on gender and smile attribute classification tasks using four publicly available datasets and with gender and race as the protected attributes. The obtained outcomes consistently demonstrate improved accuracy by up to 2% and 5% for the gender and smile attribute classification tasks, respectively, using our proposed approaches. Further, the demographic bias was significantly reduced, outperforming the State-of-the-Art (SOTA) bias mitigation and baseline techniques by up to 55% for both classification tasks. The demo shall be released on https://github.com/hashtaglensman/HumanintheLoop.
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使用不确定性估计和人机伙伴关系缓解测试时的人口统计学偏差
面部属性分类算法经常通过在性别和种族群体中获得差异表现而表现出人口统计学偏差。现有的偏见缓解技术大多是处理中的技术,即在分类器的训练阶段实现,通常缺乏泛化性,需要人口统计学注释的训练集,并且在公平性和分类准确性之间表现出权衡。在本文中,我们提出了一种技术,以减轻偏差在测试时间,即在部署阶段,利用预测的不确定性和人机伙伴关系。在这方面,我们建议利用那些最低百分比的测试数据样本识别为具有高预测不确定性的异常值。这些在测试时识别的不确定样本由人类分析师标记,用于决策呈现和随后在持续学习框架中重新训练深度神经网络。在最小的人工参与下,通过在测试时人工指导下对网络进行迭代改进,我们寻求提高已经部署的面部属性分类算法的准确性和公平性。使用四个公开的数据集,以性别和种族作为保护属性,对性别和微笑属性分类任务进行了大量的实验。所获得的结果一致表明,使用我们提出的方法,性别和微笑属性分类任务的准确率分别提高了2%和5%。此外,人口统计学偏差显著减少,在两项分类任务中,其效果都优于最先进的(SOTA)偏差缓解和基线技术,最高可达55%。演示将在https://github.com/hashtaglensman/HumanintheLoop上发布。
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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审稿时长
98 days
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