反事实条件
反事实思维
计算机科学
因果模型
因果推理
数理经济学
计量经济学
推论
人工智能
经济
数学
心理学
统计
社会心理学
作者
Lucas de Lara,Alberto González-Sanz,Nicholas Asher,Laurent Risser,Jean–Michel Loubes
出处
期刊:Cornell University - arXiv
日期:2021-01-01
被引量:5
标识
DOI:10.48550/arxiv.2108.13025
摘要
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.
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