Sequential Bayesian Risk Set Inference for Robust Discrete Optimization via Simulation
Eunhye Song

TL;DR
This paper introduces a Bayesian framework for assessing input model risk in discrete optimization via simulation, using Gaussian process modeling and sequential inference to improve robustness and efficiency.
Contribution
It develops a novel Bayesian approach with a Gaussian process model for input uncertainty, enabling sequential risk set inference and optimal sampling in discrete OvS.
Findings
The proposed method accurately estimates the risk set under input model uncertainty.
Sequential sampling based on the GP model reduces the number of simulations needed.
The approach is flexible for parametric and nonparametric input models.
Abstract
Optimization via simulation (OvS) procedures that assume the simulation inputs are generated from the real-world distributions are subject to the risk of selecting a suboptimal solution when the distributions are substituted with input models estimated from finite real-world data -- known as input model risk. Focusing on discrete OvS, this paper proposes a new Bayesian framework for analyzing input model risk of implementing an arbitrary solution, , where uncertainty about the input models is captured by a posterior distribution. We define the -level risk set of solution as the set of solutions whose expected performance is better than by a practically meaningful margin given common input models with significant probability () under the posterior distribution. The user-specified parameters, and , control robustness of the…
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Taxonomy
TopicsSimulation Techniques and Applications · Gaussian Processes and Bayesian Inference · Advanced Multi-Objective Optimization Algorithms
