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1
Intro
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Motivation
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MetaReinforcement Learning
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Example Problem
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posterior sampling
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task relevant information
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distribution over mdps
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horizon of exploration
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Quantifying task complexity
Description:
Explore meta-reinforcement learning strategies for efficient exploration in deep reinforcement learning with Chelsea Finn from Stanford University. Delve into the motivation behind meta-reinforcement learning, examine an example problem, and understand concepts such as posterior sampling, task-relevant information, and distribution over MDPs. Investigate the horizon of exploration and learn how to quantify task complexity in this insightful 31-minute lecture from the Simons Institute's Deep Reinforcement Learning series.

Learning Exploration Strategies with Meta-Reinforcement Learning

Simons Institute
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