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1
Intro
2
Similar Setting
3
Interaction Protocol
4
Reinforcement Learning vs Supervised Learning
5
Crosscourt Equilibrium
6
Learning Rewards
7
Main Techniques
8
Challenges
9
Qvalue
10
No Regret Learning
11
Vlearn
12
Adversarial Bandit
13
General Examples
14
Nash Equilibrium
15
Product of AI
16
No Swap Regret
17
Advanced Topics
18
Linear Markov Game
19
Partial Operability
20
Recap
Description:
Explore advanced concepts in multi-agent reinforcement learning in this one-hour lecture from the Learning and Games Boot Camp. Delve into topics such as crosscourt equilibrium, learning rewards, Q-value estimation, no-regret learning, and Nash equilibrium. Examine the differences between reinforcement learning and supervised learning, and investigate challenges in multi-agent settings. Learn about adversarial bandits, linear Markov games, and partial operability. Gain insights from Princeton University's Chi Jin on cutting-edge techniques and advanced topics in this complex field of artificial intelligence and game theory.

Multi-Agent Reinforcement Learning - Part II

Simons Institute
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