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Harri Valpola: System 2 AI and Planning in Model-Based Reinforcement Learning

Machine Learning Street Talk (MLST)

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Exploring Model-Based Reinforcement Learning

This chapter examines the intricacies of model-based reinforcement learning, highlighting the distinctions from model-free methods and the significance of internal environmental models for effective action planning. It addresses the challenges of epistemic uncertainty and discusses innovative techniques like denoising autoencoders to enhance planning efficiency. The conversation also emphasizes the integration of diverse sensor data, the effectiveness of deep neural networks, and the potential risks associated with adversarial planning.

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