Gaussian Process Optimization with Mutual Information

Contal, Emile, Perchet, Vianney, Vayatis, Nicolas

arXiv.org Machine Learning 

In this paper, we analyze a generic algorithm scheme for sequential global optimization using Gaussian processes. The upper bounds we derive on the cumulative regret for this generic algorithm improve by an exponential factor the previously known bounds for algorithms like GP-UCB. We also introduce the novel Gaussian Process Mutual Information algorithm (GP-MI), which significantly improves further these upper bounds for the cumulative regret. We confirm the efficiency of this algorithm on synthetic and real tasks against the natural competitor, GP-UCB, and also the Expected Improvement heuristic. After the publication of our article, we found an error in the proof of Lemma 1 which invalidates the main theorem.

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