Randomised Gaussian Process Upper Confidence Bound for Bayesian Optimisation

Berk, Julian, Gupta, Sunil, Rana, Santu, Venkatesh, Svetha

arXiv.org Machine Learning 

In order to improve the performance of Bayesian optimisation, we develop a modified Gaussian process upper confidence bound (GP-UCB) acquisition function. This is done by sampling the exploration-exploitation trade-off parameter from a distribution. We prove that this allows the expected trade-off parameter to be altered to better suit the problem without compromising a bound on the function's Bayesian regret. We also provide results showing that our method achieves better performance than GP-UCB in a range of real-world and synthetic problems.

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