Pessimistic asynchronous sampling in high-cost Bayesian optimization
Asynchronous Bayesian optimization is a recently implemented technique that allows for parallel operation of experimental systems and disjointed workflows. Contrasting with serial Bayesian optimization which individually selects experiments one at a time after conducting a measurement for each exper...
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Zusammenfassung: | Asynchronous Bayesian optimization is a recently implemented technique that
allows for parallel operation of experimental systems and disjointed workflows.
Contrasting with serial Bayesian optimization which individually selects
experiments one at a time after conducting a measurement for each experiment,
asynchronous policies sequentially assign multiple experiments before
measurements can be taken and evaluate new measurements continuously as they
are made available. This technique allows for faster data generation and
therefore faster optimization of an experimental space. This work extends the
capabilities of asynchronous optimization methods beyond prior studies by
evaluating four additional policies that incorporate pessimistic predictions in
the training data set. Combined with a conventional policy that uses model
predictions, the five total policies were evaluated in a simulated environment
and benchmarked with serial sampling. Under some conditions and parameter space
dimensionalities, the pessimistic prediction asynchronous policy reached
optimum experimental conditions in significantly fewer experiments than
equivalent serial policies and proved to be less susceptible to convergence
onto local optima at higher dimensions. Without accounting for the faster
sampling rate, the pessimistic asynchronous algorithm presented in this work
could result in more efficient algorithm driven optimization of high-cost
experimental spaces. Accounting for sampling rate, the presented asynchronous
algorithm could allow for faster optimization in experimental spaces where
multiple experiments can be run before results are collected. |
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DOI: | 10.48550/arxiv.2406.15291 |