Randomized multi-class classification under system constraints: a unified approach via post-processing
By: Evgenii Chzhen, Mohamed Hebiri, Gayane Taturyan
Potential Business Impact:
Fixes computer predictions to be fair and honest.
We study the problem of multi-class classification under system-level constraints expressible as linear functionals over randomized classifiers. We propose a post-processing approach that adjusts a given base classifier to satisfy general constraints without retraining. Our method formulates the problem as a linearly constrained stochastic program over randomized classifiers, and leverages entropic regularization and dual optimization techniques to construct a feasible solution. We provide finite-sample guarantees for the risk and constraint satisfaction for the final output of our algorithm under minimal assumptions. The framework accommodates a broad class of constraints, including fairness, abstention, and churn requirements.
Similar Papers
A Unified Framework for Large-Scale Inference of Classification: Error Rate Control and Optimality
Methodology
Helps computers sort things more reliably.
Distributionally Robust Control with Constraints on Linear Unidimensional Projections
Systems and Control
Helps computers make smart choices with unknown risks.
Risk-averse Fair Multi-class Classification
Machine Learning (Stat)
Helps computers learn from messy, incomplete data.