Regime-Conditioned Evaluation in Multi-Context Bayesian Optimization
Noel Thomas

TL;DR
This paper introduces a regime-conditioned evaluation method for transfer Bayesian optimization, accounting for how different conditions like budget and prior quality affect acquisition performance.
Contribution
It proposes the Portable Regime Score PRS to predict acquisition success across regimes and develops RegimePlanner for adaptive acquisition switching.
Findings
Changing budget reverses acquisition rankings on GDSC2 benchmark.
PRS accurately predicts winners in reversal cases from pre-comparison data.
RegimePlanner outperforms static methods across multiple HPO tasks.
Abstract
Published transfer-BO comparisons often estimate an average treatment effect of acquisition choice over hidden regime variables, while practitioners need the conditional effect for their specific prior quality, budget ratio, and metric. An audit of 40 transfer-BO papers from NeurIPS, ICML, ICLR, AISTATS, UAI, TMLR, JMLR, and AutoML-Conf (2022-2025) finds that 98% never vary B/|A| as a controlled axis. On the same GDSC2 benchmark, changing only the budget reverses the ranking: at B=50, Greedy outperforms UCB by 0.050 Hit@1, while at B=100, UCB outperforms Greedy by 0.035. We capture this transition with the Portable Regime Score PRS=(B/|A|)(1-rho), where rho is the prior rank correlation and can be estimated from pilot contexts before the main comparison. Across 79 conditions spanning chemistry, drug-response biology, and HPO, a hierarchical model gives beta=0.50 (p=1.1e-9), and 19% of…
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