Randomized Solutions to Convex Programs with Multiple Chance Constraints
Georg Schildbach, Lorenzo Fagiano, Manfred Morari

TL;DR
This paper enhances the scenario approach for chance-constrained optimization by introducing the concept of support rank, which improves bounds and reduces complexity in problems with multiple constraints.
Contribution
It introduces the support rank concept, allowing tighter bounds and computational efficiency improvements for multi-constraint chance-constrained problems.
Findings
Support rank improves bounds on constraint violation probability.
Multi-constraint problems benefit from reduced computational complexity.
The approach applies to linear and quadratic constraints in practical scenarios.
Abstract
The scenario-based optimization approach (`scenario approach') provides an intuitive way of approximating the solution to chance-constrained optimization programs, based on finding the optimal solution under a finite number of sampled outcomes of the uncertainty (`scenarios'). A key merit of this approach is that it neither assumes knowledge of the uncertainty set, as it is common in robust optimization, nor of its probability distribution, as it is usually required in stochastic optimization. Moreover, the scenario approach is computationally efficient as its solution is based on a deterministic optimization program that is canonically convex, even when the original chance-constrained problem is not. Recently, researchers have obtained theoretical foundations for the scenario approach, providing a direct link between the number of scenarios and bounds on the constraint violation…
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