MLLGOCDec 9, 2025

Worst-case generation via minimax optimization in Wasserstein space

arXiv:2512.08176v16 citationsh-index: 7
Originality Highly original
AI Analysis

This addresses robustness evaluation for machine learning and other systems under distribution shifts, offering a novel continuous method that improves scalability and generalization over discrete approaches.

The paper tackles the problem of worst-case generation for evaluating robustness under distribution shifts by developing a generative modeling framework based on min-max optimization in Wasserstein space, achieving a simulation-free approach with global convergence guarantees validated on synthetic and image data.

Worst-case generation plays a critical role in evaluating robustness and stress-testing systems under distribution shifts, in applications ranging from machine learning models to power grids and medical prediction systems. We develop a generative modeling framework for worst-case generation for a pre-specified risk, based on min-max optimization over continuous probability distributions, namely the Wasserstein space. Unlike traditional discrete distributionally robust optimization approaches, which often suffer from scalability issues, limited generalization, and costly worst-case inference, our framework exploits the Brenier theorem to characterize the least favorable (worst-case) distribution as the pushforward of a transport map from a continuous reference measure, enabling a continuous and expressive notion of risk-induced generation beyond classical discrete DRO formulations. Based on the min-max formulation, we propose a Gradient Descent Ascent (GDA)-type scheme that updates the decision model and the transport map in a single loop, establishing global convergence guarantees under mild regularity assumptions and possibly without convexity-concavity. We also propose to parameterize the transport map using a neural network that can be trained simultaneously with the GDA iterations by matching the transported training samples, thereby achieving a simulation-free approach. The efficiency of the proposed method as a risk-induced worst-case generator is validated by numerical experiments on synthetic and image data.

Foundations

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

Your Notes