High-Dimensional Bayesian Optimization via Tree-Structured Additive
Models
- URL: http://arxiv.org/abs/2012.13088v1
- Date: Thu, 24 Dec 2020 03:56:44 GMT
- Title: High-Dimensional Bayesian Optimization via Tree-Structured Additive
Models
- Authors: Eric Han, Ishank Arora, Jonathan Scarlett
- Abstract summary: We consider generalized additive models in which low-dimensional functions with overlapping subsets of variables are composed to model a high-dimensional target function.
Our goal is to lower the computational resources required and facilitate faster model learning.
We demonstrate and discuss the efficacy of our approach via a range of experiments on synthetic functions and real-world datasets.
- Score: 40.497123136157946
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Bayesian Optimization (BO) has shown significant success in tackling
expensive low-dimensional black-box optimization problems. Many optimization
problems of interest are high-dimensional, and scaling BO to such settings
remains an important challenge. In this paper, we consider generalized additive
models in which low-dimensional functions with overlapping subsets of variables
are composed to model a high-dimensional target function. Our goal is to lower
the computational resources required and facilitate faster model learning by
reducing the model complexity while retaining the sample-efficiency of existing
methods. Specifically, we constrain the underlying dependency graphs to tree
structures in order to facilitate both the structure learning and optimization
of the acquisition function. For the former, we propose a hybrid graph learning
algorithm based on Gibbs sampling and mutation. In addition, we propose a novel
zooming-based algorithm that permits generalized additive models to be employed
more efficiently in the case of continuous domains. We demonstrate and discuss
the efficacy of our approach via a range of experiments on synthetic functions
and real-world datasets.
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