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Scalable Decision Focused Learning via Online Trainable Surrogates

About

Decision support systems often rely on solving complex optimization problems that may require to estimate uncertain parameters beforehand. Recent studies have shown how using traditionally trained estimators for this task can lead to suboptimal solutions. Using the actual decision cost as a loss function (called Decision Focused Learning) can address this issue, but with a severe loss of scalability at training time. To address this issue, we propose an acceleration method based on replacing costly loss function evaluations with an efficient surrogate. Unlike previously defined surrogates, our approach relies on unbiased estimators reducing the risk of spurious local optima and can provide information on its local confidence allowing one to switch to a fallback method when needed. Furthermore, the surrogate is designed for a black-box setting, which enables compensating for simplifications in the optimization model and accounting for recourse actions during cost computation. In our results, the method reduces costly inner solver calls, with a solution quality comparable to other state-of-the-art techniques.

Gaetano Signorelli, Michele Lombardi• 2025

Related benchmarks

TaskDatasetResultRank
Combinatorial OptimizationWSMC-10-250
Runtime289.2
2
Combinatorial OptimizationWSMC-10-500
Runtime459.7
2
Combinatorial OptimizationWSMC-10-750
Runtime638.5
2
Combinatorial OptimizationWSMC-10-1000
Runtime818.4
2
High-dimensional predictionToy-64
Average Regret5.61
2
High-dimensional predictionToy-128
Average Regret4.18
2
High-dimensional predictionToy-256
Average Regret1.29
2
High-dimensional predictionToy-512
Average Regret0.29
2
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