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arxiv: 1703.04335 · v2 · submitted 2017-03-13 · 📊 stat.ML

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Practical Bayesian Optimization for Variable Cost Objectives

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keywords approachoptimizationbayesiancostnovelvariableachieveacquisition
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We propose a novel Bayesian Optimization approach for black-box functions with an environmental variable whose value determines the tradeoff between evaluation cost and the fidelity of the evaluations. Further, we use a novel approach to sampling support points, allowing faster construction of the acquisition function. This allows us to achieve optimization with lower overheads than previous approaches and is implemented for a more general class of problem. We show this approach to be effective on synthetic and real world benchmark problems.

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  1. A Tutorial on Bayesian Optimization

    stat.ML 2018-07 unverdicted novelty 4.0

    Bayesian optimization uses Gaussian process regression to build a surrogate model and acquisition functions to guide sampling for optimizing costly objective functions, including a new formal generalization of expecte...