Calibrated Counterfactual Conformal Fairness ($C^3F$): Post-hoc, Shift-Aware Coverage Parity via Conformal Prediction and Counterfactual Regularization (2509.25295v1)
Abstract: We present Calibrated Counterfactual Conformal Fairness ($C3F$), a post-hoc procedure that targets group-conditional coverage parity under covariate shift. $C3F$ combines importance-weighted conformal calibration with a counterfactual regularizer based on path-specific effects in a structural causal model. The method estimates group-specific nonconformity quantiles using likelihood-ratio weights so that coverage degrades gracefully with the second moment of the weights. We derive finite-sample lower bounds on group-wise coverage and a bound on the equalized conditional coverage gap, and we show first-order control of a counterfactual coverage-parity surrogate via smooth threshold regularization. The approach is model-agnostic, label-efficient, and deployable without retraining. Empirical evaluations on standard classification benchmarks demonstrate improved group-conditional coverage and competitive efficiency relative to shift-aware and fairness-oriented conformal baselines. We discuss practical considerations, including partial availability of sensitive attributes and robustness to structural causal misspecification.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.