We develop a novel method for ensuring fairness in machine learning which we term as the Renyi Fair Information Bottleneck (RFIB). We consider two different fairness constraints - demographic parity and equalized odds - for learning fair representations and derive a loss function via a variational approach that uses Renyi's divergence with its tunable parameter $\alpha$ and that takes into account the triple constraints of utility, fairness, and compactness of representation. We then evaluate the performance of our method for image classification using the EyePACS medical imaging dataset, showing it outperforms competing state of the art techniques with performance measured using a variety of compound utility/fairness metrics, including accuracy gap and Rawls' minimal accuracy.
翻译:我们开发了一种确保机器学习公平性的新颖方法,我们称之为Renyi Fair Information Bottleneck(RFIB ) 。 我们考虑两种不同的公平性限制 — — 人口均等和均等机会 — — 用于学习公平陈述,并通过一种变通方法产生损失功能,即使用Renyi与其金枪鱼可捕量参数($\alpha$)的差异,并考虑到代表性的实用性、公平性和紧凑性三重限制。然后我们使用EyePACS医疗成像数据集评估我们图像分类方法的性能,显示它优于艺术技术的竞争性状态,而其性能则使用各种复合效用/公平度衡量标准来衡量,包括准确性差距和Rawls最低精确度。