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Counterfactual Fairness by Combining Factual and Counterfactual Predictions

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In high-stake domains such as healthcare and hiring, the role of machine learning (ML) in decision-making raises significant fairness concerns. This work focuses on Counterfactual Fairness (CF), which posits that an ML model's outcome on any individual should remain unchanged if they had belonged to a different demographic group. Previous works have proposed methods that guarantee CF. Notwithstanding, their effects on the model's predictive performance remains largely unclear. To fill in this gap, we provide a theoretical study on the inherent trade-off between CF and predictive performance in a model-agnostic manner. We first propose a simple but effective method to cast an optimal but potentially unfair predictor into a fair one without losing the optimality. By analyzing its excess risk in order to achieve CF, we quantify this inherent trade-off. Further analysis on our method's performance with access to only incomplete causal knowledge is also conducted. Built upon it, we propose a performant algorithm that can be applied in such scenarios. Experiments on both synthetic and semi-synthetic datasets demonstrate the validity of our analysis and methods.

Zeyu Zhou, Tianci Liu, Ruqi Bai, Jing Gao, Murat Kocaoglu, David I. Inouye• 2024

Related benchmarks

TaskDatasetResultRank
RegressionSynthetic Regression Oracle (test)
MSE0.826
8
RegressionLaw School (test)
MSE0.828
8
ClassificationSynthetic Classification Oracle (test)
Accuracy57.1
8
ClassificationBios (test)
Accuracy79.5
7
RegressionLaw School
RMSE1.057
5
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