Bootstrapped Thompson Sampling and Deep Exploration
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This technical note presents a new approach to carrying out the kind of exploration achieved by Thompson sampling, but without explicitly maintaining or sampling from posterior distributions. The approach is based on a bootstrap technique that uses a combination of observed and artificially generated data. The latter serves to induce a prior distribution which, as we will demonstrate, is critical to effective exploration. We explain how the approach can be applied to multi-armed bandit and reinforcement learning problems and how it relates to Thompson sampling. The approach is particularly well-suited for contexts in which exploration is coupled with deep learning, since in these settings, maintaining or generating samples from a posterior distribution becomes computationally infeasible.
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Diffusion Approximations for Thompson Sampling in the Small Gap Regime
In the small gap regime, Thompson sampling and a broad class of sampling-based algorithms converge weakly to identical SDE limits, making regret performance insensitive to likelihood misspecification.
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