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  • title: On Information Gain and Regret Bounds in Gaussian Process Bandits
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            On Information Gain and Regret Bounds in Gaussian Process Bandits
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            On Information Gain and Regret Bounds in Gaussian Process Bandits

            Apr 14, 2021

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            SV

            Sattar Vakili

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            KK

            Kia Khezeli

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            VP

            Victor Picheny

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            About

            Consider the sequential optimization of an expensive to evaluate and possibly non-convex objective function $f$ from noisy feedback, that can be considered as a continuum-armed bandit problem. Upper bounds on the regret performance of several learning algorithms (GP-UCB, GP-TS, and their variants) are known under both a Bayesian (when $f$ is a sample from a Gaussian process (GP)) and a frequentist (when $f$ lives in a reproducing kernel Hilbert space) setting. The regret bounds often rely on the…

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