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Fair Inference on Outcomes

机译:关于结果的公平推断

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In this paper, we consider the problem of fair statistical inference involving outcome variables. Examples include classification and regression problems, and estimating treatment effects in randomized trials or observational data. The issue of fairness arises in such problems where some covariates or treatments are "sensitive," in the sense of having potential of creating discrimination. In this paper, we argue that the presence of discrimination can be formalized in a sensible way as the presence of an effect of a sensitive covariate on the outcome along certain causal pathways, a view which generalizes (Pearl 2009). A fair outcome model can then be learned by solving a constrained optimization problem. We discuss a number of complications that arise in classical statistical inference due to this view and provide workarounds based on recent work in causal and semi-parametric inference.
机译:在本文中,我们认为涉及结果变量的公平统计推断问题。 实例包括分类和回归问题,以及估算随机试验或观察数据中的治疗效果。 公平问题出现在某些协变或治疗“敏感”的问题中,有可能产生歧视的意义。 在本文中,我们认为存在歧视的存在可以以明智的方式形式化,因为存在敏感的协变量对沿着某些因果途径的结果的影响,这是一种概括的视图(Pearl 2009)。 然后可以通过解决受限制的优化问题来学习公平的结果模型。 由于此视图,讨论了许多在古典统计推断中出现的并发症,并根据原因和半参数推断的最新工作提供解决方法。

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