Stagewise Safe Bayesian Optimization with Gaussian Processes
Abstract
Enforcing safety is a key aspect of many problems pertaining to sequential decision making under uncertainty, which require the decisions made at every step to be both informative of the optimal decision and also safe. For example, we value both efficacy and comfort in medical therapy, and efficiency and safety in robotic control. We consider this problem of optimizing an unknown utility function with absolute feedback or preference feedback subject to unknown safety constraints. We develop an efficient safe Bayesian optimization algorithm, StageOpt, that separates safe region expansion and utility function maximization into two distinct stages. Compared to existing approaches which interleave between expansion and optimization, we show that StageOpt is more efficient and naturally applicable to a broader class of problems. We provide theoretical guarantees for both the satisfaction of safety constraints as well as convergence to the optimal utility value. We evaluate StageOpt on both a variety of synthetic experiments, as well as in clinical practice. We demonstrate that StageOpt is more effective than existing safe optimization approaches, and is able to safely and effectively optimize spinal cord stimulation therapy in our clinical experiments.
Additional Information
© 2018 by the author(s). This research was also supported in part by NSF Awards #1564330 & #1637598, JPL PDF IAMS100224, a Bloomberg Data Science Research Grant, and a gift from Northrop Grumman.Attached Files
Published - sui18a.pdf
Submitted - 1806.07555.pdf
Supplemental Material - sui18a-supp.pdf
Files
Additional details
- Eprint ID
- 92663
- Resolver ID
- CaltechAUTHORS:20190205-102511954
- NSF
- IIS-1564330
- NSF
- CCF-1637598
- JPL President and Director's Fund
- IAMS100224
- Bloomberg Data Science
- Northrop Grumman
- Created
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2019-02-05Created from EPrint's datestamp field
- Updated
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2023-06-02Created from EPrint's last_modified field