A Unified Framework for Bayesian Optimization under Contextual Uncertainty

Page view(s)
10
Checked on Apr 04, 2025
A Unified Framework for Bayesian Optimization under Contextual Uncertainty
Title:
A Unified Framework for Bayesian Optimization under Contextual Uncertainty
Journal Title:
International Conference on Learning Representations
DOI:
Publication Date:
11 May 2024
Citation:
Tay, S. S., Foo, C.-S., Urano, D., Leong, R., & Low, B. K. H. (2024). A Unified Framework for Bayesian Optimization under Contextual Uncertainty. The Twelfth International Conference on Learning Representations.
Abstract:
Bayesian optimization under contextual uncertainty (BOCU) is a family of BO problems in which the learner makes a decision prior to observing the context and must manage the risks involved. Distributionally robust BO (DRBO) is a subset of BOCU that affords robustness against context distribution shift, and includes the optimization of expected values and worst-case values as special cases. By considering the first derivatives of the DRBO objective, we generalize DRBO to one that includes several other uncertainty objectives studied in the BOCU literature such as worst-case sensitivity (and thus notions of risk such as variance, range, and conditional value-at-risk) and mean-risk tradeoffs. We develop a general Thompson sampling algorithm that is able to optimize any objective within the BOCU framework, analyze its theoretical properties, and compare it to suitable baselines across different experimental settings and uncertainty objectives.
License type:
Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0)
Funding Info:
This research / project is supported by the Agency for Science, Technology and Research (A*STAR) - RIE2020 Advanced Manufacturing and Engineering (AME) Industry Alignment Fund – Pre Positioning (IAF-PP)
Grant Reference no. : A19E4a0101
Description:
ISSN:
Nil
Files uploaded:

File Size Format Action
4649-a-unified-framework-for-b.pdf 3.25 MB PDF Open