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#114 - Secrets of Deep Reinforcement Learning (Minqi Jiang)

Machine Learning Street Talk (MLST)

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Minimizing Regret in Reinforcement Learning

This chapter explores the complexities and limitations of representation in machine learning, focusing on the concept of minimax regret as an alternative to traditional metrics. It emphasizes the significance of robust decision-making strategies in uncertain environments, using theoretical frameworks such as Nash equilibria and Markov decision processes. Additionally, the chapter contrasts reinforcement learning with supervised learning, highlighting the challenges of exploratory data gathering and the necessity for effective trajectory learning.

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