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Fair Kernel Regression via Fair Feature Embedding in Kernel Space

机译:通过在内核空间中嵌入公平特征进行公平内核回归

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In recent years, there have been significant efforts on mitigating unethical demographic biases in machine learning methods. However, very little work is done for kernel methods. In this paper, we propose a novel fair kernel regression method via fair feature embedding (FKR-F2E) in kernel space. Motivated by prior works feature processing for fair learning and feature selection for kernel methods, we propose to learn fair feature embeddings in kernel space, where the demographic discrepancy of feature distributions is minimized. Through experiments on three public real-world data sets, we show the proposed FKR-F^2E achieves significantly lower prediction disparity compared with the state-of-the-art fair kernel regression method and several other baseline methods.
机译:近年来,在减轻机器学习方法中不道德的人口统计学偏差方面做出了巨大的努力。但是,对内核方法所做的工作很少。在本文中,我们提出了一种通过公平特征嵌入(FKR-F 2 E)在内核空间中。受先前工作以进行公平学习的特征处理和内核方法的特征选择为动力,我们建议在内核空间中学习公平特征嵌入,从而将特征分布的人口统计学差异最小化。通过在三个公开的现实世界数据集上进行的实验,我们表明,与最新的公平核回归方法和其他几种基线方法相比,所提出的FKR-F ^ 2E可以实现更低的预测差异。

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