BOIS: Bayesian Optimization of Interconnected Systems
Leonardo D. Gonz\'alez, Victor M. Zavala

TL;DR
BOIS introduces an efficient Bayesian optimization framework that exploits structural knowledge in interconnected systems by using adaptive linearizations of composite functions, outperforming standard methods in chemical process optimization.
Contribution
This work presents BOIS, a novel approach that enables efficient Bayesian optimization of interconnected systems by leveraging adaptive linearizations for composite functions, reducing computational complexity.
Findings
BOIS outperforms standard BO in chemical process optimization.
BOIS accurately captures the statistics of composite functions.
BOIS achieves performance gains over sampling-based approaches.
Abstract
Bayesian optimization (BO) has proven to be an effective paradigm for the global optimization of expensive-to-sample systems. One of the main advantages of BO is its use of Gaussian processes (GPs) to characterize model uncertainty which can be leveraged to guide the learning and search process. However, BO typically treats systems as black-boxes and this limits the ability to exploit structural knowledge (e.g., physics and sparse interconnections). Composite functions of the form , wherein GP modeling is shifted from the performance function to an intermediate function , offer an avenue for exploiting structural knowledge. However, the use of composite functions in a BO framework is complicated by the need to generate a probability density for from the Gaussian density of calculated by the GP (e.g., when is nonlinear it is not possible to obtain a…
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Taxonomy
TopicsAdvanced Multi-Objective Optimization Algorithms · Gaussian Processes and Bayesian Inference · Machine Learning in Materials Science
