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

Machine Learning Street Talk (MLST)

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Exploring Decision-Making: Balancing Choices

This chapter investigates the dynamics of pure exploration versus exploitation in decision-making, using examples like AlphaGo and drug trials. It highlights the exploration-exploitation trade-off, discussing algorithms such as Epsilon Greedy and their relevance in practical applications, including ethical considerations in clinical trials. The chapter also addresses advancements in multi-armed bandit analysis and the challenges of applying these concepts effectively in real-world scenarios.

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