High-Dimensional Bayesian Optimization with Manifold Gaussian Processes

02/27/2019
by   Riccardo Moriconi, et al.
0

Bayesian optimization (BO) is a powerful approach for seeking the global optimum of expensive black-box functions and has proven successful for fine tuning hyper-parameters of machine learning models. The Bayesian optimization routine involves learning a response surface and maximizing a score to select the most valuable inputs to be queried at the next iteration. These key steps are subject to the curse of dimensionality so that Bayesian optimization does not scale beyond 10--20 parameters. In this work, we address this issue and propose a high-dimensional BO method that learns a nonlinear low-dimensional manifold of the input space. We achieve this with a multi-layer neural network embedded in the covariance function of a Gaussian process. This approach applies unsupervised dimensionality reduction as a byproduct of a supervised regression solution. This also allows exploiting data efficiency of Gaussian process models in a Bayesian framework. We also introduce a nonlinear mapping from the manifold to the high-dimensional space based on multi-output Gaussian processes and jointly train it end-to-end via marginal likelihood maximization. We show this intrinsically low-dimensional optimization outperforms recent baselines in high-dimensional BO literature on a set of benchmark functions in 60 dimensions.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/29/2020

Semi-supervised Embedding Learning for High-dimensional Bayesian Optimization

Bayesian optimization is a broadly applied methodology to optimize the e...
research
04/25/2020

Learning to Guide Random Search

We are interested in derivative-free optimization of high-dimensional fu...
research
03/23/2023

Clustering based on Mixtures of Sparse Gaussian Processes

Creating low dimensional representations of a high dimensional data set ...
research
02/19/2018

Entropy-Isomap: Manifold Learning for High-dimensional Dynamic Processes

Scientific and engineering processes produce massive high-dimensional da...
research
10/27/2021

Multi-fidelity data fusion through parameter space reduction with applications to automotive engineering

Multi-fidelity models are of great importance due to their capability of...
research
01/16/2020

Scalable Hyperparameter Optimization with Lazy Gaussian Processes

Most machine learning methods require careful selection of hyper-paramet...
research
03/30/2021

High-Dimensional Bayesian Optimization with Multi-Task Learning for RocksDB

RocksDB is a general-purpose embedded key-value store used in multiple d...

Please sign up or login with your details

Forgot password? Click here to reset