Human-in-the-Loop Meta Bayesian Optimization for Fusion Energy and Scientific Applications
arXiv cs.AI / 5/4/2026
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Key Points
- The paper proposes a Human-in-the-Loop Meta Bayesian Optimization (HL-MBO) framework to accelerate research in data-scarce, high-stakes scientific domains like inertial confinement fusion.
- HL-MBO combines expert knowledge with few-shot, uncertainty-aware machine learning by using a meta-learned surrogate model and an expert-informed acquisition function to recommend next experiments.
- To support usability and decision-making, the approach includes interpretable explanations for why candidate experiments are suggested.
- Experiments indicate HL-MBO outperforms existing Bayesian optimization baselines on multiple tasks, including inertial confinement fusion energy yield optimization, molecular optimization, and superconducting material critical temperature maximization.
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