Redirecting to original paper in 30 seconds...

Click below to go immediately or wait for automatic redirect

arxiv_ai 90% Match Research Paper Optimization Researchers,Machine Learning Engineers,Operations Research Analysts 1 week ago

Data-driven Projection Generation for Efficiently Solving Heterogeneous Quadratic Programming Problems

graph-neural-networks › graph-learning
📄 Abstract

Abstract: We propose a data-driven framework for efficiently solving quadratic programming (QP) problems by reducing the number of variables in high-dimensional QPs using instance-specific projection. A graph neural network-based model is designed to generate projections tailored to each QP instance, enabling us to produce high-quality solutions even for previously unseen problems. The model is trained on heterogeneous QPs to minimize the expected objective value evaluated on the projected solutions. This is formulated as a bilevel optimization problem; the inner optimization solves the QP under a given projection using a QP solver, while the outer optimization updates the model parameters. We develop an efficient algorithm to solve this bilevel optimization problem, which computes parameter gradients without backpropagating through the solver. We provide a theoretical analysis of the generalization ability of solving QPs with projection matrices generated by neural networks. Experimental results demonstrate that our method produces high-quality feasible solutions with reduced computation time, outperforming existing methods.
Authors (2)
Tomoharu Iwata
Futoshi Futami
Submitted
October 30, 2025
arXiv Category
stat.ML
arXiv PDF

Key Contributions

This paper presents a data-driven framework using GNNs to generate instance-specific projections for efficiently solving high-dimensional Quadratic Programming (QP) problems. It formulates this as a bilevel optimization problem and develops an efficient algorithm to compute gradients without backpropagating through the QP solver, offering theoretical guarantees on generalization.

Business Value

Enables faster and more efficient solutions for complex optimization problems in finance, logistics, and engineering, leading to cost savings and improved decision-making.