BO4IO: A Bayesian optimization approach to inverse optimization with uncertainty quantification
Yen-An Lu, Wei-Shou Hu, Joel A. Paulson, Qi Zhang

TL;DR
This paper introduces BO4IO, a Bayesian optimization-based method for inverse optimization that efficiently estimates unknown parameters and quantifies uncertainty without complex reformulations.
Contribution
The paper presents a novel derivative-free Bayesian optimization approach for inverse optimization that handles nonconvex and discrete problems while providing uncertainty quantification.
Findings
Accurately estimates parameters from small, noisy datasets.
Effective in nonconvex and mixed-integer nonlinear problems.
Provides reliable confidence intervals and identifiability assessment.
Abstract
This work addresses data-driven inverse optimization (IO), where the goal is to estimate unknown parameters in an optimization model from observed decisions that can be assumed to be optimal or near-optimal solutions to the optimization problem. The IO problem is commonly formulated as a large-scale bilevel program that is notoriously difficult to solve. Deviating from traditional exact solution methods, we propose a derivative-free optimization approach based on Bayesian optimization, which we call BO4IO, to solve general IO problems. We treat the IO loss function as a black box and approximate it with a Gaussian process model. Using the predicted posterior function, an acquisition function is minimized at each iteration to query new candidate solutions and sequentially converge to the optimal parameter estimates. The main advantages of using Bayesian optimization for IO are two-fold:…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Underwater Acoustics Research · Gaussian Processes and Bayesian Inference
MethodsGaussian Process
