Multi-Step Budgeted Bayesian Optimization with Unknown Evaluation Costs

11/12/2021
by   Raul Astudillo, et al.
0

Bayesian optimization (BO) is a sample-efficient approach to optimizing costly-to-evaluate black-box functions. Most BO methods ignore how evaluation costs may vary over the optimization domain. However, these costs can be highly heterogeneous and are often unknown in advance. This occurs in many practical settings, such as hyperparameter tuning of machine learning algorithms or physics-based simulation optimization. Moreover, those few existing methods that acknowledge cost heterogeneity do not naturally accommodate a budget constraint on the total evaluation cost. This combination of unknown costs and a budget constraint introduces a new dimension to the exploration-exploitation trade-off, where learning about the cost incurs the cost itself. Existing methods do not reason about the various trade-offs of this problem in a principled way, leading often to poor performance. We formalize this claim by proving that the expected improvement and the expected improvement per unit of cost, arguably the two most widely used acquisition functions in practice, can be arbitrarily inferior with respect to the optimal non-myopic policy. To overcome the shortcomings of existing approaches, we propose the budgeted multi-step expected improvement, a non-myopic acquisition function that generalizes classical expected improvement to the setting of heterogeneous and unknown evaluation costs. Finally, we show that our acquisition function outperforms existing methods in a variety of synthetic and real problems.

READ FULL TEXT
research
11/23/2020

Pareto-efficient Acquisition Functions for Cost-Aware Bayesian Optimization

Bayesian optimization (BO) is a popular method to optimize expensive bla...
research
06/29/2020

Efficient Nonmyopic Bayesian Optimization via One-Shot Multi-Step Trees

Bayesian optimization is a sequential decision making framework for opti...
research
12/27/2021

Expected hypervolume improvement for simultaneous multi-objective and multi-fidelity optimization

Bayesian optimization has proven to be an efficient method to optimize e...
research
02/16/2023

Robust expected improvement for Bayesian optimization

Bayesian Optimization (BO) links Gaussian Process (GP) surrogates with s...
research
06/10/2021

A Nonmyopic Approach to Cost-Constrained Bayesian Optimization

Bayesian optimization (BO) is a popular method for optimizing expensive-...
research
11/28/2019

Greed is Good: Exploration and Exploitation Trade-offs in Bayesian Optimisation

The performance of acquisition functions for Bayesian optimisation is in...
research
02/28/2022

Rectified Max-Value Entropy Search for Bayesian Optimization

Although the existing max-value entropy search (MES) is based on the wid...

Please sign up or login with your details

Forgot password? Click here to reset