Robust Stochastic Optimization with Rare-Event Modeling
Aakil M. Caunhye, Douglas Alem

TL;DR
This paper introduces a robust stochastic optimization method that effectively models rare events using Poisson distributions and Bregman divergence, leading to less conservative decisions and improved outcomes in flood risk management.
Contribution
It develops a novel rare-event modeling framework using Poisson distribution and Bregman divergence, with theoretical bounds and practical reformulations for decision-making.
Findings
Reduced conservatism in decision-making due to rare-event modeling
Significantly better decisions in flood risk management case study
Theoretical bounds on the probability of constraint violation
Abstract
In this paper, we propose a novel robust stochastic optimization approach with a distinctive consideration for rare events, in which divergence measures are used to bound the event-wise ambiguity sets. This is done by using the Poisson distribution with uncertain expected value parameter to model rare events and showing that the distribution possesses theoretical properties that enable the derivation of rare-event probability bounds. We employ the proven bijection between the Bregman divergence and the Poisson distribution to characterize variations within the probability bounds, and demonstrate that the explicit use of the Poisson-specific Bregman divergence results in reduced conservatism in decision-making. Moreover, we derive a probability bound on this conservatism reduction, which is a concept akin to the popular probability of constraint violation in robust optimization. The…
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Taxonomy
TopicsRisk and Portfolio Optimization · Water resources management and optimization · Flood Risk Assessment and Management
