A General Framework for Constrained Bayesian Optimization using Information-based Search
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Authors
Hernández-Lobato, José Miguel
Gelbart, Michael A.
Adams, Ryan P.
Hoffman, Matthew W.
Ghahramani, Zoubin
Publication Date
2016-09-24Journal Title
Journal of Machine Learning Research
Publisher
MIT Press
Volume
17
Issue
1
Pages
5549-5601
Language
English
Type
Article
This Version
VoR
Metadata
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Hernández-Lobato, J. M., Gelbart, M. A., Adams, R. P., Hoffman, M. W., & Ghahramani, Z. (2016). A General Framework for Constrained Bayesian Optimization using Information-based Search. Journal of Machine Learning Research, 17 (1), 5549-5601. https://www.repository.cam.ac.uk/handle/1810/254715
Description
This is the author accepted manuscript. The final version is available from MIT Press via https://dl.acm.org/citation.cfm?id=2946645.3053442.
Abstract
We present an information-theoretic framework for solving global black-box optimization problems that also have black-box constraints. Of particular interest to us is to efficiently solve problems with decoupled constraints, in which subsets of the objective and constraint functions may be evaluated independently. For example, when the objective is evaluated on a CPU and the constraints are evaluated independently on a GPU. These problems require an acquisition function that can be separated into the contributions of the individual function evaluations. We develop one such acquisition function and call it Predictive Entropy Search with Constraints (PESC). PESC is an approximation to the expected information gain criterion and it compares favorably to alternative approaches based on improvement in several synthetic and real-world problems. In addition to this, we consider problems with a mix of functions that are fast and slow to evaluate. These problems require balancing the amount of time spent in the meta-computation of PESC and in the actual evaluation of the target objective. We take a bounded rationality approach and develop a partial update for PESC which trades off accuracy against speed. We then propose a method for adaptively switching between the partial and full updates for PESC. This allows us to interpolate between versions of PESC that are efficient in terms of function evaluations and those that are efficient in terms of wall-clock time. Overall, we demonstrate that PESC is an effective algorithm that provides a promising direction towards a unified solution for constrained Bayesian optimization.
Keywords
Bayesian optimization, constraints, predictive entropy search
Sponsorship
José Miguel Hernández-Lobato acknowledges support from the Rafael del Pino Foundation. Zoubin Ghahramani acknowledges support from Google Focused Research Award and EPSRC grant EP/I036575/1. Matthew W. Hoffman acknowledges support from EPSRC grant EP/J012300/1.
Identifiers
This record's URL: https://www.repository.cam.ac.uk/handle/1810/254715