Counterfactual frameworks have grown popular in machine learning for both explaining algorithmic decisions but also defining individual notions of fairness, more intuitive than typical group fairness conditions. However, state-of-the-art models to compute counterfactuals are either unrealistic or unfeasible. In particular, while Pearl's causal inference provides appealing rules to calculate counterfactuals, it relies on a model that is unknown and hard to discover in practice. We address the problem of designing realistic and feasible counterfactuals in the absence of a causal model. We define transport-based counterfactual models as collections of joint probability distributions between observable distributions, and show their connection to causal counterfactuals. More specifically, we argue that optimal-transport theory defines relevant transport-based counterfactual models, as they are numerically feasible, statistically-faithful, and can coincide under some assumptions with causal counterfactual models. Finally, these models make counterfactual approaches to fairness feasible, and we illustrate their practicality and efficiency on fair learning. With this paper, we aim at laying out the theoretical foundations for a new, implementable approach to counterfactual thinking.
翻译:反事实框架在解释算法决定的机器学习中越来越受欢迎,但也界定了个人公平概念,比典型群体公平条件更直观。然而,计算反事实的最先进的模型要么不现实,要么不现实,要么不可行。特别是,尽管珍珠的因果关系推论提供了计算反事实的具有吸引力的规则,但它依赖一个未知和难以在实践中发现的模型。我们处理在没有因果关系模型的情况下设计现实和可行的反事实的问题。我们把基于运输的反事实模型定义为可观测分布之间联合概率分布的集合,并展示其与因果关系反事实的联系。更具体地说,我们说,最佳运输理论界定了基于运输的相关反事实模型,因为它们在数字上是可行的,在统计上是可信的,并且可以在一些假设中与因果关系反事实模型相协调。最后,这些模型使得公平做法变得可行,我们展示了它们的实际性和公平学习效率。我们用这份文件来为新的、可执行的反事实思维奠定理论基础。