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Learning Controllable Fair Representations

机译:学习可控的公平表示

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Learning data representations that are transferable and are fair with respect to certain protected attributes is crucial to reducing unfair decisions while preserving the utility of the data. We propose an information-theoretically motivated objective for learning maximally expressive representations subject to fairness constraints. We demonstrate that a range of existing approaches optimize approximations to the Lagrangian dual of our objective. In contrast to these existing approaches, our objective allows the user to control the fairness of the representations by specifying limits on unfairness. Exploiting duality, we introduce a method that optimizes the model parameters as well as the expressiveness-fairness trade-off. Empirical evidence suggests that our proposed method can balance the trade-off between multiple notions of fairness and achieves higher expressiveness at a lower computational cost.
机译:学习可转移的数据表示形式并且相对于某些受保护的属性而言是公平的,这对于减少不公平的决定并同时保留数据的实用性至关重要。我们提出了一个信息理论上的动机目标,用于学习受公平性约束的最大表达形式。我们证明了一系列现有的方法可以优化我们目标的拉格朗日对偶。与这些现有方法相反,我们的目标是允许用户通过指定不公平的限制来控制表示的公平性。利用对偶性,我们介绍了一种优化模型参数以及表达-公平权衡的方法。经验证据表明,我们提出的方法可以在多个公平概念之间权衡取舍,并以较低的计算成本实现较高的表现力。

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