Human-AI Collaborative Autonomous Experimentation With Proxy Modeling for Comparative Observation
arXiv cs.LG / 3/16/2026
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Key Points
- px-BO introduces a human-AI collaborative loop for Bayesian optimization by replacing direct scalar objective with on-the-fly human voting compared with existing experiments, converted to a proxy objective via the Bradley-Terry model.
- The proxy model acts as an AI surrogate to enable future votes, reducing human workload while maintaining quality, with periodic human validation to update the proxy.
- The approach addresses high-dimensional, noisy physical descriptors in materials research and improves exploration efficiency over traditional data-driven Bayesian optimization.
- It is demonstrated on simulated data and BEPS data generated from PTO samples, showing enhanced domain-expert control and potential for accelerated material space exploration.
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