Causal Context Connects Counterfactual Fairness to Robust Prediction and Group Fairness
Jacy Reese Anthis, Victor Veitch

TL;DR
This paper uses causal context to connect counterfactual fairness with group fairness and robust prediction, showing their equivalence under certain conditions and practical ways to test fairness.
Contribution
It introduces a causal framework linking counterfactual fairness to group fairness metrics and demonstrates their equivalence in common fairness scenarios.
Findings
Counterfactual fairness can be accuracy-optimal without trade-offs.
Causal graph analysis reveals when group fairness metrics align with counterfactual fairness.
Counterfactual fairness can be tested through simple group fairness measurements.
Abstract
Counterfactual fairness requires that a person would have been classified in the same way by an AI or other algorithmic system if they had a different protected class, such as a different race or gender. This is an intuitive standard, as reflected in the U.S. legal system, but its use is limited because counterfactuals cannot be directly observed in real-world data. On the other hand, group fairness metrics (e.g., demographic parity or equalized odds) are less intuitive but more readily observed. In this paper, we use to bridge the gaps between counterfactual fairness, robust prediction, and group fairness. First, we motivate counterfactual fairness by showing that there is not necessarily a fundamental trade-off between fairness and accuracy because, under plausible conditions, the counterfactually fair predictor is in fact accuracy-optimal in an unbiased…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Code & Models
Videos
Taxonomy
TopicsEthics and Social Impacts of AI
MethodsCounterfactuals Explanations
