2021
DOI: 10.48550/arxiv.2111.04688
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Universal and data-adaptive algorithms for model selection in linear contextual bandits

Abstract: Model selection in contextual bandits is an important complementary problem to regret minimization with respect to a fixed model class. We consider the simplest non-trivial instance of model-selection: distinguishing a simple multi-armed bandit problem from a linear contextual bandit problem. Even in this instance, current state-of-the-art methods explore in a suboptimal manner and require strong "feature-diversity" conditions. In this paper, we introduce new algorithms that a) explore in a dataadaptive manner… Show more

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