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Training Well-Generalizing Classifiers for Fairness Metrics and Other Data-Dependent Constraints

机译:为公平度量和其他数据依赖约束训练普遍性的分类器

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Classifiers can be trained with data-dependent constraints to satisfy fairness goals, reduce churn, achieve a targeted false positive rate, or other policy goals. We study the generalization performance for such constrained optimization problems, in terms of how well the constraints are satisfied at evaluation time, given that they are satisfied at training time. To improve generalization, we frame the problem as a two-player game where one player optimizes the model parameters on a training dataset, and the other player enforces the constraints on an independent validation dataset. We build on recent work in two-player constrained optimization to show that if one uses this two-dataset approach, then constraint generalization can be significantly improved. As we illustrate experimentally, this approach works not only in theory, but also in practice.
机译:分类器可以接受数据相关的限制,以满足公平目标,减少流失,实现目标假率,或其他政策目标。我们研究了这种受约束优化问题的概括性表现,因为在评估时间在评估时间的满足方面,考虑到它们在培训时间满意。为了提高泛化,我们将问题作为两个玩家游戏,其中一个玩家优化训练数据集上的模型参数,另一个播放器在独立验证数据集上强制执行约束。我们在近期工作中建立了两个玩家约束优化的工作,以证明如果一个双数据集方法,则可以显着提高约束泛化。正如我们通过实验说明的那样,这种方法不仅在理论上工作,而且在实践中工作。

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