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Randomized multi-class classification under system constraints: a unified approach via post-processing

Published: December 16, 2025 | arXiv ID: 2512.14246v1

By: Evgenii Chzhen, Mohamed Hebiri, Gayane Taturyan

Potential Business Impact:

Fixes computer predictions to be fair and honest.

Business Areas:
A/B Testing Data and Analytics

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.

Page Count
24 pages

Category
Mathematics:
Optimization and Control