13
42

Adaptive Rate of Convergence of Thompson Sampling for Gaussian Process Optimization

Abstract

We consider the problem of global optimization of a function over a continuous domain. In our setup, we can evaluate the function sequentially at points of our choice and the evaluations are noisy. We frame it as a continuum-armed bandit problem with a Gaussian Process prior on the function. In this regime, most algorithms have been developed to minimize some form of regret. In this paper, we study the convergence of the sequential point xtx^t to the global optimizer xx^* for the Thompson Sampling approach. Under some assumptions and regularity conditions, we prove concentration bounds for xtx^t where the probability that xtx^t is bounded away from xx^* decays exponentially fast in tt. Moreover, the result allows us to derive adaptive convergence rates depending on the function structure.

View on arXiv
Comments on this paper