Journal article
Distributionally robust optimization techniques in batch Bayesian optimization
- Abstract:
- We propose a novel, theoretically-grounded, acquisition function for batch Bayesian optimisation informed by insights from distributionally robust optimization. Our acquisition function is a lower bound on the well-known Expected Improvement function – which requires a multi-dimensional Gaussian Expectation over a piecewise affine function – and is computed by evaluating instead the best-case expectation over all probability distributions consistent with the same mean and variance as the original Gaussian distribution. We show that, unlike alternative approaches including Expected Improvement, our proposed acquisition function avoids multi-dimensional integrations entirely, and can be calculated exactly as the solution of a convex optimization problem in the form of a tractable semidefinite program (SDP). Moreover, we prove that the solution of this SDP also yields exact numerical derivatives, which enable efficient optimisation of the acquisition function. Numerical results suggest that our acquisition function performs very similar to the computationally intractable exact Expected Improvement and considerably better than other heuristics.
- Publication status:
- Not published
- Peer review status:
- Not peer reviewed
Actions
Authors
- Publisher:
- Cornell University
- Journal:
- arXiv More from this journal
- Publication date:
- 2017-07-13
- Pubs id:
-
pubs:820260
- UUID:
-
uuid:4e369c60-cc77-4ffb-8bd4-e5611e4d9d15
- Local pid:
-
pubs:820260
- Source identifiers:
-
820260
- Deposit date:
-
2018-01-17
Terms of use
- Copyright date:
- 2017
- Notes:
- © The Authors. This is an arXiv preprint and is available at: https://arxiv.org/abs/1707.04191
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