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2015 | OriginalPaper | Chapter

Global Optimization with Sparse and Local Gaussian Process Models

Authors : Tipaluck Krityakierne, David Ginsbourger

Published in: Machine Learning, Optimization, and Big Data

Publisher: Springer International Publishing

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Abstract

We present a novel surrogate model-based global optimization framework allowing a large number of function evaluations. The method, called SpLEGO, is based on a multi-scale expected improvement (EI) framework relying on both sparse and local Gaussian process (GP) models. First, a bi-objective approach relying on a global sparse GP model is used to determine potential next sampling regions. Local GP models are then constructed within each selected region. The method subsequently employs the standard expected improvement criterion to deal with the exploration-exploitation trade-off within selected local models, leading to a decision on where to perform the next function evaluation(s). The potential of our approach is demonstrated using the so-called Sparse Pseudo-input GP as a global model. The algorithm is tested on four benchmark problems, whose number of starting points ranges from \(10^{2}\) to \(10^{4}\). Our results show that SpLEGO is effective and capable of solving problems with large number of starting points, and it even provides significant advantages when compared with state-of-the-art EI algorithms.

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Metadata
Title
Global Optimization with Sparse and Local Gaussian Process Models
Authors
Tipaluck Krityakierne
David Ginsbourger
Copyright Year
2015
DOI
https://doi.org/10.1007/978-3-319-27926-8_16

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