Risk-Averse Models in Bilevel Stochastic Linear Programming
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We consider bilevel linear problems, where some parameters are stochastic, and the leader has to decide in a here-and-now fashion, while the follower has complete information. In this setting, the leader's outcome can be modeled by a random variable, which we evaluate based on some law-invariant convex risk measure. A qualitative stability result under perturbations of the underlying probability distribution is presented. Moreover, for the expectation, the expected excess, and the upper semideviation, we establish Lipschitz continuity as well as sufficient conditions for differentiability. Finally, for finite discrete distributions, we reformulate the bilevel stochastic problems as standard bilevel problems and propose a regularization scheme for bilevel linear problems.
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Bilevel Optimization under Uncertainty
Develops existence, optimality, stability, and reformulation theory for bilevel linear programs with stochastic lower-level right-hand sides using coherent risk measures and dominance constraints.
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