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The Dynamics of Q-learning in Population Games: a Physics-Inspired
  Continuity Equation Model

The Dynamics of Q-learning in Population Games: a Physics-Inspired Continuity Equation Model

3 March 2022
Shuyue Hu
Chin-wing Leung
Ho-fung Leung
Harold Soh
ArXivPDFHTML

Papers citing "The Dynamics of Q-learning in Population Games: a Physics-Inspired Continuity Equation Model"

3 / 3 papers shown
Title
Provably Efficient Information-Directed Sampling Algorithms for
  Multi-Agent Reinforcement Learning
Provably Efficient Information-Directed Sampling Algorithms for Multi-Agent Reinforcement Learning
Qiaosheng Zhang
Chenjia Bai
Shuyue Hu
Zhen Wang
Xuelong Li
39
1
0
30 Apr 2024
Heterogeneous Beliefs and Multi-Population Learning in Network Games
Heterogeneous Beliefs and Multi-Population Learning in Network Games
Shuyue Hu
Harold Soh
Georgios Piliouras
26
1
0
12 Jan 2023
Continuous Strategy Replicator Dynamics for Multi--Agent Learning
Continuous Strategy Replicator Dynamics for Multi--Agent Learning
Aram Galstyan
AI4CE
70
30
0
29 Apr 2009
1