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Counterfactual Multi-Agent Reinforcement Learning with Graph Convolution
  Communication

Counterfactual Multi-Agent Reinforcement Learning with Graph Convolution Communication

1 April 2020
Jianyu Su
Stephen C. Adams
Peter A. Beling
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Papers citing "Counterfactual Multi-Agent Reinforcement Learning with Graph Convolution Communication"

7 / 7 papers shown
Title
MAGNNETO: A Graph Neural Network-based Multi-Agent system for Traffic
  Engineering
MAGNNETO: A Graph Neural Network-based Multi-Agent system for Traffic Engineering
Guillermo Bernárdez
José Suárez-Varela
Albert Lopez
Xiang Shi
Shihan Xiao
Xiangle Cheng
Pere Barlet-Ros
A. Cabellos-Aparicio
33
24
0
31 Mar 2023
Curiosity-driven Exploration in Sparse-reward Multi-agent Reinforcement
  Learning
Curiosity-driven Exploration in Sparse-reward Multi-agent Reinforcement Learning
Jiong Li
Pratik Gajane
37
4
0
21 Feb 2023
NVIF: Neighboring Variational Information Flow for Large-Scale
  Cooperative Multi-Agent Scenarios
NVIF: Neighboring Variational Information Flow for Large-Scale Cooperative Multi-Agent Scenarios
Jiajun Chai
Yuanheng Zhu
Dongbin Zhao
28
0
0
03 Jul 2022
RACA: Relation-Aware Credit Assignment for Ad-Hoc Cooperation in
  Multi-Agent Deep Reinforcement Learning
RACA: Relation-Aware Credit Assignment for Ad-Hoc Cooperation in Multi-Agent Deep Reinforcement Learning
Haoxing Chen
Guang Yang
Junge Zhang
Qiyue Yin
Kaiqi Huang
29
2
0
02 Jun 2022
Is Machine Learning Ready for Traffic Engineering Optimization?
Is Machine Learning Ready for Traffic Engineering Optimization?
Guillermo Bernárdez
José Suárez-Varela
Albert Lopez
Bo-Xi Wu
Shihan Xiao
Xiangle Cheng
Pere Barlet-Ros
A. Cabellos-Aparicio
37
46
0
03 Sep 2021
Value-Decomposition Multi-Agent Actor-Critics
Value-Decomposition Multi-Agent Actor-Critics
Jianyu Su
Stephen C. Adams
Peter A. Beling
68
101
0
24 Jul 2020
Learning Multi-Agent Coordination through Connectivity-driven
  Communication
Learning Multi-Agent Coordination through Connectivity-driven Communication
E. Pesce
Giovanni Montana
24
15
0
12 Feb 2020
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