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.

Abstract

Inertial Confinement Fusion (ICF) holds transformative promise for sustainable, near-limitless clean energy, yet remains constrained by prohibitively high costs and limited experimental opportunities. This paper presents Human-in-the-Loop Meta Bayesian Optimization (HL-MBO), a framework that integrates expert knowledge with few-shot, uncertainty-aware machine learning to accelerate discovery in data-scarce, high-stakes scientific domains. HL-MBO introduces a meta-learned surrogate model with an expert-informed acquisition function to recommend candidate experiments. To foster trust and enable informed decisions, HL-MBO also provides interpretable explanations of its suggestions. We show HL-MBO outperforms current BO methods on ICF energy yield optimization, as well as benchmarks in molecular optimization and critical temperature maximization for superconducting materials.