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1
Intro
2
Supervised Learning
3
Notation
4
Low Bounds
5
Challenges
6
Linear Model
7
Evaluation Problem
8
Online Problem
9
Linear Realizability
10
Sufficient Conditions
11
completeness assumption
12
special cases
13
wrap up
Description:
Explore the statistical complexity of reinforcement learning in this 30-minute lecture by Sham Kakade from Harvard University, presented at the Simons Institute 10th Anniversary Symposium. Delve into key concepts including supervised learning, notation, low bounds, and challenges in the field. Examine the linear model, evaluation problem, and online problem, while considering linear realizability and sufficient conditions. Investigate the completeness assumption and special cases before concluding with a comprehensive wrap-up of the topic.

What Is the Statistical Complexity of Reinforcement Learning?

Simons Institute
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