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1
Intro
2
Single-Agent Reinforcement Learning
3
Applications of Multi-Agent Systems
4
Stochastic Games: Description of Play
5
Policies (General Treatment)
6
Objective Functions
7
Policy Update Rules and Policy Dynamics
8
e-Satisficing: Definitions
9
Two-Player Games and e-Satisficing: proof sketch (ctd)
10
Quantization of Policy Sets
11
Decoupling Learning and Adaptation
12
Algorithm for Symmetric Games: Abridged Algorithm
13
Simulations
Description:
Explore policy revision dynamics and algorithm design in stochastic and mean-field games through this 56-minute seminar from GERAD Research Center. Delve into game theoretic models for analyzing strategic interactions in multi-agent systems, focusing on stochastic games and N-player mean-field games. Examine common learning paradigms for policy selection, with emphasis on simple decentralized algorithms. Discover structural results on policy dynamics and their application to algorithm design. Learn about a decentralized learning algorithm and its convergence to near-equilibrium policies in various game classes. Cover topics including single-agent reinforcement learning, multi-agent system applications, stochastic game play description, policy treatments, objective functions, policy update rules, e-satisficing, two-player games, policy set quantization, learning and adaptation decoupling, and symmetric game algorithms. Gain insights from simulations presented by Bora Yongacoglu from Queen's University. Read more

Policy Revision Dynamics and Algorithm Design in Stochastic and Mean-Field Games

GERAD Research Center
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