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Spectral Algorithms for Computing Fair Support Vector Machines

机译:计算公平支持向量机的谱算法

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Classifiers and rating scores are prone to implicitly codifying biases, which may be present in the training data, against protected classes (i.e., age, gender, or race). So it is important to understand how to design classifiers and scores that prevent discrimination in predictions. This paper develops computationally tractable algorithms for designing accurate but fair support vector machines (SVM’s). Our approach imposes a constraint on the covariance matrices conditioned on each protected class, which leads to a nonconvex quadratic constraint in the SVM formulation. We develop iterative algorithms to compute fair linear and kernel SVM’s, which solve a sequence of relaxations constructed using a spectral decomposition of the nonconvex constraint. Its effectiveness in achieving high prediction accuracy while ensuring fairness is shown through numerical experiments on several data sets.
机译:分类器和等级分数倾向于针对受保护的类别(即年龄,性别或种族)隐式地整理可能存在于训练数据中的偏见。因此,重要的是要了解如何设计分类器和分数,以防止预测中的歧视。本文开发了易于计算的算法,用于设计准确但公平的支持向量机(SVM)。我们的方法对以每个受保护类为条件的协方差矩阵施加了约束,这导致SVM公式中出现了非凸二次约束。我们开发了迭代算法来计算线性和内核SVM,从而解决了使用非凸约束的频谱分解构造的一系列松弛。通过在多个数据集上进行数值实验,显示了在确保公平性的同时实现高预测精度的有效性。

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