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