LGOCMay 7, 2025

Primal-dual algorithm for contextual stochastic combinatorial optimization

arXiv:2505.04757v15 citationsh-index: 4
Originality Highly original
AI Analysis

This addresses decision-making under uncertainty for operations research and machine learning, offering a novel method for leveraging contextual information in combinatorial settings.

The paper tackles contextual stochastic combinatorial optimization by integrating neural networks with combinatorial layers to minimize empirical risk, demonstrating linear convergence and achieving performance comparable to imitation learning on a minimum weight spanning tree problem.

This paper introduces a novel approach to contextual stochastic optimization, integrating operations research and machine learning to address decision-making under uncertainty. Traditional methods often fail to leverage contextual information, which underscores the necessity for new algorithms. In this study, we utilize neural networks with combinatorial optimization layers to encode policies. Our goal is to minimize the empirical risk, which is estimated from past data on uncertain parameters and contexts. To that end, we present a surrogate learning problem and a generic primal-dual algorithm that is applicable to various combinatorial settings in stochastic optimization. Our approach extends classic Fenchel-Young loss results and introduces a new regularization method using sparse perturbations on the distribution simplex. This allows for tractable updates in the original space and can accommodate diverse objective functions. We demonstrate the linear convergence of our algorithm under certain conditions and provide a bound on the non-optimality of the resulting policy in terms of the empirical risk. Experiments on a contextual stochastic minimum weight spanning tree problem show that our algorithm is efficient and scalable, achieving performance comparable to imitation learning of solutions computed using an expensive Lagrangian-based heuristic.

Foundations

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

Your Notes