Composition of kernel and acquisition functions for High Dimensional
Bayesian Optimization
- URL: http://arxiv.org/abs/2003.04207v1
- Date: Mon, 9 Mar 2020 15:45:57 GMT
- Title: Composition of kernel and acquisition functions for High Dimensional
Bayesian Optimization
- Authors: Antonio Candelieri, Ilaria Giordani, Riccardo Perego, Francesco
Archetti
- Abstract summary: We use the addition-ality of the objective function into mapping both the kernel and the acquisition function of the Bayesian Optimization.
This ap-proach makes more efficient the learning/updating of the probabilistic surrogate model.
Results are presented for real-life application, that is the control of pumps in urban water distribution systems.
- Score: 0.1749935196721634
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Bayesian Optimization has become the reference method for the global
optimization of black box, expensive and possibly noisy functions. Bayesian
Op-timization learns a probabilistic model about the objective function,
usually a Gaussian Process, and builds, depending on its mean and variance, an
acquisition function whose optimizer yields the new evaluation point, leading
to update the probabilistic surrogate model. Despite its sample efficiency,
Bayesian Optimiza-tion does not scale well with the dimensions of the problem.
The optimization of the acquisition function has received less attention
because its computational cost is usually considered negligible compared to
that of the evaluation of the objec-tive function. Its efficient optimization
is often inhibited, particularly in high di-mensional problems, by multiple
extrema. In this paper we leverage the addition-ality of the objective function
into mapping both the kernel and the acquisition function of the Bayesian
Optimization in lower dimensional subspaces. This ap-proach makes more
efficient the learning/updating of the probabilistic surrogate model and allows
an efficient optimization of the acquisition function. Experi-mental results
are presented for real-life application, that is the control of pumps in urban
water distribution systems.
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