Multiagent Reinforcement Learning: Rollout and Policy Iteration

Multiagent Reinforcement Learning: Rollout and Policy Iteration

Simons Institute via YouTube Direct link

For this Talk we Focus on Finite-State Intinite Horizon Problems

3 of 9

3 of 9

For this Talk we Focus on Finite-State Intinite Horizon Problems

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Multiagent Reinforcement Learning: Rollout and Policy Iteration

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  1. 1 Sources
  2. 2 Multiagent Problems - A Very Old (19608) and Well-Researched Field
  3. 3 For this Talk we Focus on Finite-State Intinite Horizon Problems
  4. 4 Policy Iteration (PI) Algorithm
  5. 5 Outline of Our Approach for Multiagent Problems
  6. 6 Underlying Theory: Trading off Control and State Complexity (NDP book, 1996)
  7. 7 Comparing Standard with Multiagent Rollout/Policy Iteration
  8. 8 Approximate Policy Iteration with Agent-by-Agent Policy Improvement
  9. 9 Concluding Remarks

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