Human-Algorithm Collaborative Bayesian Optimization for Engineering Systems
Tom Savage, Ehecatl Antonio del Rio Chanona

TL;DR
This paper introduces a collaborative Bayesian optimization framework that incorporates human expert input, especially discrete choices, to enhance decision-making and accelerate convergence in engineering system optimization.
Contribution
It presents a novel method integrating human discrete decision-making with Bayesian optimization, improving efficiency and accountability in engineering applications.
Findings
Faster convergence with expert input.
Maintains Bayesian optimization advantages.
Recovers standard regret levels without expert knowledge.
Abstract
Bayesian optimization has been successfully applied throughout Chemical Engineering for the optimization of functions that are expensive-to-evaluate, or where gradients are not easily obtainable. However, domain experts often possess valuable physical insights that are overlooked in fully automated decision-making approaches, necessitating the inclusion of human input. In this article we re-introduce the human back into the data-driven decision making loop by outlining an approach for collaborative Bayesian optimization. Our methodology exploits the hypothesis that humans are more efficient at making discrete choices rather than continuous ones and enables experts to influence critical early decisions. We apply high-throughput (batch) Bayesian optimization alongside discrete decision theory to enable domain experts to influence the selection of experiments. At every iteration we apply a…
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Taxonomy
TopicsHuman-Automation Interaction and Safety
MethodsSparse Evolutionary Training
