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Multicalibration: Calibration for the (Computationally-Identifiable) Masses

机译:多重校准:(可计算识别)质量的校准

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We develop and study multicalibration as a new measure of fairness in machine learning that aims to mitigate inadvertent or malicious discrimination that is introduced at training time (even from ground truth data). Multicalibration guarantees meaningful (calibrated) predictions for every subpopulation that can be identified within a specified class of computations. The specified class can be quite rich; in particular, it can contain many overlapping subgroups of a protected group. We demonstrate that in many settings this strong notion of protection from discrimination is provably attainable and aligned with the goal of obtaining accurate predictions. Along the way, we present algorithms for learning a multicalibrated predictor, study the computational complexity of this task, and illustrate tight connections to the agnostic learning model.
机译:我们开发和研究多重校准,将其作为机器学习公平性的一种新度量,旨在减轻训练时(甚至来自地面真实数据)引入的无意或恶意歧视。多重校准可确保在指定的计算类别中可以识别出的每个子群体有意义(经过校准)的预测。指定的类可以非常丰富。特别是,它可以包含受保护组的许多重叠子组。我们证明,在许多情况下,这种防止歧视的强大观念是可以实现的,并且与获得准确预测的目标保持一致。在此过程中,我们提出了用于学习多标定预测器的算法,研究了此任务的计算复杂性,并说明了与不可知论学习模型的紧密联系。

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