English

Scenario Aggregation using Binary Decision Diagrams for Stochastic Programs with Endogenous Uncertainty

Optimization and Control 2017-01-18 v2 Discrete Mathematics

Abstract

Modeling decision-dependent scenario probabilities in stochastic programs is difficult and typically leads to large and highly non-linear MINLPs that are very difficult to solve. In this paper, we develop a new approach to obtain a compact representation of the recourse function using a set of binary decision diagrams (BDDs) that encode a nested cover of the scenario set. The resulting BDDs can then be used to efficiently characterize the decision-dependent scenario probabilities by a set of linear inequalities, which essentially factorizes the probability distribution and thus allows to reformulate the entire problem as a small mixed-integer linear program. The approach is applicable to a large class of stochastic programs with multivariate binary scenario sets, such as stochastic network design, network reliability, or stochastic network interdiction problems. Computational results show that the BDD-based scenario representation reduces the problem size, and hence the computation time, significant compared to previous approaches.

Keywords

Cite

@article{arxiv.1701.04055,
  title  = {Scenario Aggregation using Binary Decision Diagrams for Stochastic Programs with Endogenous Uncertainty},
  author = {Utz-Uwe Haus and Carla Michini and Marco Laumanns},
  journal= {arXiv preprint arXiv:1701.04055},
  year   = {2017}
}

Comments

Corrected spelling of second author's name, add MSC info

R2 v1 2026-06-22T17:50:34.255Z