Jan. 1, 2023, midnight | Johannes Kirschner, Tor Lattimore, Andreas Krause

JMLR www.jmlr.org

Partial monitoring is an expressive framework for sequential decision-making with an abundance of applications, including graph-structured and dueling bandits, dynamic pricing and transductive feedback models. We survey and extend recent results on the linear formulation of partial monitoring that naturally generalizes the standard linear bandit setting. The main result is that a single algorithm, information-directed sampling (IDS), is (nearly) worst-case rate optimal in all finite-action games. We present a simple and unified analysis of stochastic partial monitoring, and further extend …

algorithms applications decision decision making dynamic dynamic pricing feedback framework graph linear making monitoring pricing standard survey

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