Probabilistic Bayesian optimal experimental design using conditional normalizing flows
Rafael Orozco, Felix J. Herrmann, Peng Chen

TL;DR
This paper introduces a scalable Bayesian optimal experimental design method using conditional normalizing flows and probabilistic binary design, demonstrated on high-dimensional MRI data acquisition.
Contribution
It presents a novel joint optimization approach combining conditional normalizing flows with probabilistic binary design for efficient Bayesian OED.
Findings
Effective in high-dimensional MRI data acquisition
Achieves efficient maximization of expected information gain
Handles binary design variables robustly
Abstract
Bayesian optimal experimental design (OED) seeks to conduct the most informative experiment under budget constraints to update the prior knowledge of a system to its posterior from the experimental data in a Bayesian framework. Such problems are computationally challenging because of (1) expensive and repeated evaluation of some optimality criterion that typically involves a double integration with respect to both the system parameters and the experimental data, (2) suffering from the curse-of-dimensionality when the system parameters and design variables are high-dimensional, (3) the optimization is combinatorial and highly non-convex if the design variables are binary, often leading to non-robust designs. To make the solution of the Bayesian OED problem efficient, scalable, and robust for practical applications, we propose a novel joint optimization approach. This approach performs…
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Taxonomy
TopicsOptimal Experimental Design Methods · Advanced Multi-Objective Optimization Algorithms · Advanced Statistical Process Monitoring
