Sayesian Optimisation Under Uncertain Inputs

international conference on artificial intelligence and statistics(2019)

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摘要
Bayesian optimisation (BO) has been a successful approach to optiunse functions which are expensive to evaluate and whose observations are noisy, Classical BO algonthi s, however, do not, account for errors about the location where observations are taken, which is a common issue in problem with physical components. In these cases, the estimation of the actual query location is also subject to uncertainty. In this context, we propose an upper confidence bound (UCB) algorithm for BO problems where both the outcome of a query and the true query location arc uncertain. The algorithm employs a Gaussian process model that takes probability distributions as inputs. Theoretical results are provided for both the proposed algorithm and a conventional UCB approach within the uncertain-inputs setting. Finally, we evaluate each method's performance experimentally, comparing them to other input noise aware BO approaches on simulated scenarios involving synthetic and real data,.
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