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#030 Multi-Armed Bandits and Pure-Exploration (Wouter M. Koolen)

Machine Learning Street Talk (MLST)

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Navigating Contextual Bandits and Computational Challenges

This chapter explores the integration of features in contextual bandit problems, particularly how patient characteristics impact treatment selection. It also examines the complexities of transformer models' attention mechanisms and the potential for transforming these challenges into bandit problems to improve computational efficiency.

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