Asymptotic Convergence of Thompson Sampling

11/08/2020
by   Cem Kalkanli, et al.
0

Thompson sampling has been shown to be an effective policy across a variety of online learning tasks. Many works have analyzed the finite time performance of Thompson sampling, and proved that it achieves a sub-linear regret under a broad range of probabilistic settings. However its asymptotic behavior remains mostly underexplored. In this paper, we prove an asymptotic convergence result for Thompson sampling under the assumption of a sub-linear Bayesian regret, and show that the actions of a Thompson sampling agent provide a strongly consistent estimator of the optimal action. Our results rely on the martingale structure inherent in Thompson sampling.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset