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Tractable contextual bandits beyond realizability

Machine Learning 2021-03-01 v2 Statistics Theory Machine Learning Statistics Theory

Abstract

Tractable contextual bandit algorithms often rely on the realizability assumption - i.e., that the true expected reward model belongs to a known class, such as linear functions. In this work, we present a tractable bandit algorithm that is not sensitive to the realizability assumption and computationally reduces to solving a constrained regression problem in every epoch. When realizability does not hold, our algorithm ensures the same guarantees on regret achieved by realizability-based algorithms under realizability, up to an additive term that accounts for the misspecification error. This extra term is proportional to T times a function of the mean squared error between the best model in the class and the true model, where T is the total number of time-steps. Our work sheds light on the bias-variance trade-off for tractable contextual bandits. This trade-off is not captured by algorithms that assume realizability, since under this assumption there exists an estimator in the class that attains zero bias.

Keywords

Cite

@article{arxiv.2010.13013,
  title  = {Tractable contextual bandits beyond realizability},
  author = {Sanath Kumar Krishnamurthy and Vitor Hadad and Susan Athey},
  journal= {arXiv preprint arXiv:2010.13013},
  year   = {2021}
}

Comments

35 pages, 6 figures

R2 v1 2026-06-23T19:37:24.187Z