LGOCMay 21, 2025

Fair Supervised Learning Through Constraints on Smooth Nonconvex Unfairness-Measure Surrogates

arXiv:2505.15788v3h-index: 30
Originality Incremental advance
AI Analysis

This work addresses fairness in machine learning for applications requiring strict fairness guarantees, though it is incremental as it builds on existing optimization methods.

The paper tackles the problem of ensuring fairness in supervised learning by introducing a smooth nonconvex surrogate for unfairness measures and using hard constraints instead of regularization, resulting in tractable optimization with minimal tuning and the ability to handle multiple unfairness measures simultaneously.

A new strategy for fair supervised machine learning is proposed. The main advantages of the proposed strategy as compared to others in the literature are as follows. (a) We introduce a new smooth nonconvex surrogate to approximate the Heaviside functions involved in discontinuous unfairness measures. The surrogate is based on smoothing methods from the optimization literature, and is new for the fair supervised learning literature. The surrogate is a tight approximation which ensures the trained prediction models are fair, as opposed to other (e.g., convex) surrogates that can fail to lead to a fair prediction model in practice. (b) Rather than rely on regularizers (that lead to optimization problems that are difficult to solve) and corresponding regularization parameters (that can be expensive to tune), we propose a strategy that employs hard constraints so that specific tolerances for unfairness can be enforced without the complications associated with the use of regularization. (c) Our proposed strategy readily allows for constraints on multiple (potentially conflicting) unfairness measures at the same time. Multiple measures can be considered with a regularization approach, but at the cost of having even more difficult optimization problems to solve and further expense for tuning. By contrast, through hard constraints, our strategy leads to optimization models that can be solved tractably with minimal tuning.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes