Overview
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.
Syllabus
Intro
Motivation
MetaReinforcement Learning
Example Problem
posterior sampling
task relevant information
distribution over mdps
horizon of exploration
Quantifying task complexity
Taught by
Simons Institute