Top-$k$ Ranking Bayesian Optimization
Abstract
This paper presents a novel approach to top- ranking Bayesian optimization (top- ranking BO) which is a practical and significant generalization of preferential BO to handle top- ranking and tie/indifference observations. We first design a surrogate model that is not only capable of catering to the above observations, but is also supported by a classic random utility model. Another equally important contribution is the introduction of the first information-theoretic acquisition function in BO with preferential observation called multinomial predictive entropy search (MPES) which is flexible in handling these observations and optimized for all inputs of a query jointly. MPES possesses superior performance compared with existing acquisition functions that select the inputs of a query one at a time greedily. We empirically evaluate the performance of MPES using several synthetic benchmark functions, CIFAR- dataset, and SUSHI preference dataset.
Cite
@article{arxiv.2012.10688,
title = {Top-$k$ Ranking Bayesian Optimization},
author = {Quoc Phong Nguyen and Sebastian Tay and Bryan Kian Hsiang Low and Patrick Jaillet},
journal= {arXiv preprint arXiv:2012.10688},
year = {2020}
}
Comments
35th AAAI Conference on Artificial Intelligence (AAAI 2021), Extended version with derivations, 13 pages