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Dynamics of Boltzmann Q-Learning in Two-Player Two-Action Games
v1v2v3 (latest)

Dynamics of Boltzmann Q-Learning in Two-Player Two-Action Games

7 September 2011
Ardeshir Kianercy
Aram Galstyan
ArXiv (abs)PDFHTML

Papers citing "Dynamics of Boltzmann Q-Learning in Two-Player Two-Action Games"

15 / 15 papers shown
Regret Minimization in Population Network Games: Vanishing Heterogeneity and Convergence to Equilibria
Regret Minimization in Population Network Games: Vanishing Heterogeneity and Convergence to Equilibria
Die Hu
Shuyue Hu
Chunjiang Mu
Shiqi Fan
Chen Chu
Jinzhuo Liu
Zhen Wang
169
1
0
23 Jul 2025
Convergence and Connectivity: Dynamics of Multi-Agent Q-Learning in Random Networks
Convergence and Connectivity: Dynamics of Multi-Agent Q-Learning in Random Networks
A. Hussain
D. Leonte
Francesco Belardinelli
Raphael Huser
Dario Paccagnan
257
1
0
13 Mar 2025
Evolutionary Multi-agent Reinforcement Learning in Group Social Dilemmas
Evolutionary Multi-agent Reinforcement Learning in Group Social DilemmasChaos (Chaos), 2024
Brian Mintz
Feng Fu
407
9
0
01 Nov 2024
Mutation-Bias Learning in Games
Mutation-Bias Learning in Games
J. Bauer
Sheldon West
Eduardo Alonso
Mark Broom
96
0
0
28 May 2024
Asymptotic Convergence and Performance of Multi-Agent Q-Learning
  Dynamics
Asymptotic Convergence and Performance of Multi-Agent Q-Learning DynamicsAdaptive Agents and Multi-Agent Systems (AAMAS), 2023
A. Hussain
Francesco Belardinelli
Georgios Piliouras
270
16
0
23 Jan 2023
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 ModelAdaptive Agents and Multi-Agent Systems (AAMAS), 2022
Shuyue Hu
Chin-wing Leung
Ho-fung Leung
Harold Soh
265
8
0
03 Mar 2022
Exploration-Exploitation in Multi-Agent Competition: Convergence with
  Bounded Rationality
Exploration-Exploitation in Multi-Agent Competition: Convergence with Bounded Rationality
Stefanos Leonardos
Georgios Piliouras
Kelly Spendlove
299
40
0
24 Jun 2021
Follow-the-Regularized-Leader Routes to Chaos in Routing Games
Follow-the-Regularized-Leader Routes to Chaos in Routing GamesInternational Conference on Machine Learning (ICML), 2021
J. Bielawski
Thiparat Chotibut
Fryderyk Falniowski
Grzegorz Kosiorowski
M. Misiurewicz
Georgios Piliouras
AI4CE
185
29
0
16 Feb 2021
Exploration-Exploitation in Multi-Agent Learning: Catastrophe Theory
  Meets Game Theory
Exploration-Exploitation in Multi-Agent Learning: Catastrophe Theory Meets Game TheoryAAAI Conference on Artificial Intelligence (AAAI), 2020
Stefanos Leonardos
Georgios Piliouras
354
54
0
05 Dec 2020
The Evolutionary Dynamics of Independent Learning Agents in Population
  Games
The Evolutionary Dynamics of Independent Learning Agents in Population Games
Shuyue Hu
Chin-wing Leung
Ho-fung Leung
Harold Soh
AI4CE
175
3
0
29 Jun 2020
A Survey of Learning in Multiagent Environments: Dealing with
  Non-Stationarity
A Survey of Learning in Multiagent Environments: Dealing with Non-Stationarity
Pablo Hernandez-Leal
Michael Kaisers
T. Baarslag
Enrique Munoz de Cote
386
314
0
28 Jul 2017
On the Properties of the Softmax Function with Application in Game
  Theory and Reinforcement Learning
On the Properties of the Softmax Function with Application in Game Theory and Reinforcement Learning
Bolin Gao
Lacra Pavel
FAtt
450
368
0
03 Apr 2017
Coevolutionary networks of reinforcement-learning agents
Coevolutionary networks of reinforcement-learning agents
Ardeshir Kianercy
Aram Galstyan
146
8
0
05 Aug 2013
On Improving Energy Efficiency within Green Femtocell Networks: A
  Hierarchical Reinforcement Learning Approach
On Improving Energy Efficiency within Green Femtocell Networks: A Hierarchical Reinforcement Learning Approach
Xianfu Chen
Honggang Zhang
Tao Chen
M. Lasanen
J. Palicot
115
7
0
13 Mar 2013
Improving Energy Efficiency in Femtocell Networks: A Hierarchical
  Reinforcement Learning Framework
Improving Energy Efficiency in Femtocell Networks: A Hierarchical Reinforcement Learning Framework
Xianfu Chen
Honggang Zhang
Tao Chen
M. Lasanen
125
30
0
13 Sep 2012
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