28 juillet 2025 à 1 août 2025
Fuseau horaire Europe/Paris

Pessimistic bilevel optimization approach for decision-focused learning

1 août 2025, 10:45
30m
F207

F207

Contributed talk Contextual stochastic programming Contextual stochastic programming

Orateur

Diego Jiménez (SKEMA Business School - KU Leuven)

Description

The recent interest in contextual optimization problems, where randomness is associated with side information, has led to two primary strategies for formulation and solution. The first, estimate-then-optimize, separates the estimation of the problem's parameters from the optimization process. The second, decision-focused optimization, integrates the optimization problem's structure directly into the prediction procedure. In this work, we propose a pessimistic bilevel approach for solving general decision-focused formulations of combinatorial optimization problems. Our method solves an $\varepsilon$-approximation of the pessimistic bilevel problem using a specialized cut generation algorithm. We benchmark its performance on the 0-1 knapsack problem against estimate-then-optimize and decision-focused methods, including the popular SPO+ approach. Computational experiments highlight the proposed method's advantages, particularly in reducing out-of-sample regret.

Author

Diego Jiménez (SKEMA Business School - KU Leuven)

Co-auteurs

Bernardo Pagnoncelli (SKEMA Business School) Prof. Hande Yaman

Documents de présentation

Aucun document.