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Asymptotically Optimal Information-Directed Sampling

Machine Learning 2021-07-05 v4 Machine Learning

Abstract

We introduce a simple and efficient algorithm for stochastic linear bandits with finitely many actions that is asymptotically optimal and (nearly) worst-case optimal in finite time. The approach is based on the frequentist information-directed sampling (IDS) framework, with a surrogate for the information gain that is informed by the optimization problem that defines the asymptotic lower bound. Our analysis sheds light on how IDS balances the trade-off between regret and information and uncovers a surprising connection between the recently proposed primal-dual methods and the IDS algorithm. We demonstrate empirically that IDS is competitive with UCB in finite-time, and can be significantly better in the asymptotic regime.

Keywords

Cite

@article{arxiv.2011.05944,
  title  = {Asymptotically Optimal Information-Directed Sampling},
  author = {Johannes Kirschner and Tor Lattimore and Claire Vernade and Csaba Szepesvári},
  journal= {arXiv preprint arXiv:2011.05944},
  year   = {2021}
}

Comments

Accepted at COLT 2021