Dealing With Misspecification In Fixed-Confidence Linear Top-m Identification
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Publication:6381941
arXiv2111.01479MaRDI QIDQ6381941
Author name not available (Why is that?)
Publication date: 2 November 2021
Abstract: We study the problem of the identification of m arms with largest means under a fixed error rate (fixed-confidence Top-m identification), for misspecified linear bandit models. This problem is motivated by practical applications, especially in medicine and recommendation systems, where linear models are popular due to their simplicity and the existence of efficient algorithms, but in which data inevitably deviates from linearity. In this work, we first derive a tractable lower bound on the sample complexity of any -correct algorithm for the general Top-m identification problem. We show that knowing the scale of the deviation from linearity is necessary to exploit the structure of the problem. We then describe the first algorithm for this setting, which is both practical and adapts to the amount of misspecification. We derive an upper bound to its sample complexity which confirms this adaptivity and that matches the lower bound when 0. Finally, we evaluate our algorithm on both synthetic and real-world data, showing competitive performance with respect to existing baselines.
Has companion code repository: https://github.com/clreda/misspecified-top-m
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