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Poster

Principled Preferential Bayesian Optimization

Wenjie Xu · Wenbin Wang · Yuning Jiang · Bratislav Svetozarevic · Colin Jones

Hall C 4-9 #1106
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Wed 24 Jul 4:30 a.m. PDT — 6 a.m. PDT
 
Oral presentation: Oral 4B Optimization 1
Wed 24 Jul 7:30 a.m. PDT — 8:30 a.m. PDT

Abstract:

We study the problem of preferential Bayesian optimization (BO), where we aim to optimize a black-box function with only preference feedback over a pair of candidate solutions. Inspired by the likelihood ratio idea, we construct a confidence set of the black-box function using only the preference feedback. An optimistic algorithm with an efficient computational method is then developed to solve the problem, which enjoys an information-theoretic bound on the total cumulative regret, a first-of-its-kind for preferential BO. This bound further allows us to design a scheme to report an estimated best solution, with a guaranteed convergence rate. Experimental results on sampled instances from Gaussian processes, standard test functions, and a thermal comfort optimization problem all show that our method stably achieves better or competitive performance as compared to the existing state-of-the-art heuristics, which, however, do not have theoretical guarantees on regret bounds or convergence.

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