Learning Relevant Contextual Variables Within Bayesian Optimization
arxiv(2023)
摘要
Contextual Bayesian Optimization (CBO) efficiently optimizes black-box
functions with respect to design variables, while simultaneously integrating
contextual information regarding the environment, such as experimental
conditions. However, the relevance of contextual variables is not necessarily
known beforehand. Moreover, contextual variables can sometimes be optimized
themselves at an additional cost, a setting overlooked by current CBO
algorithms. Cost-sensitive CBO would simply include optimizable contextual
variables as part of the design variables based on their cost. Instead, we
adaptively select a subset of contextual variables to include in the
optimization, based on the trade-off between their relevance and the additional
cost incurred by optimizing them compared to leaving them to be determined by
the environment. We learn the relevance of contextual variables by sensitivity
analysis of the posterior surrogate model while minimizing the cost of
optimization by leveraging recent developments on early stopping for BO. We
empirically evaluate our proposed Sensitivity-Analysis-Driven Contextual BO
(SADCBO) method against alternatives on both synthetic and real-world
experiments, together with extensive ablation studies, and demonstrate a
consistent improvement across examples.
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