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Bayesian optimization using sequential Monte Carlo

Abstract

We consider the problem of optimizing a real-valued continuous function ff using a Bayesian approach, where the evaluations of ff are chosen sequentially by combining prior information about ff, which is described by a random process model, and past evaluation results. The main difficulty with this approach is to be able to compute the posterior distributions of quantities of interest which are used to choose evaluation points. In this article, we decide to use a Sequential Monte Carlo (SMC) approach.

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