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Scaling Up Multiagent Reinforcement Learning for Robotic Systems: Learn
  an Adaptive Sparse Communication Graph

Scaling Up Multiagent Reinforcement Learning for Robotic Systems: Learn an Adaptive Sparse Communication Graph

2 March 2020
Chuangchuang Sun
Macheng Shen
Jonathan P. How
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Papers citing "Scaling Up Multiagent Reinforcement Learning for Robotic Systems: Learn an Adaptive Sparse Communication Graph"

3 / 3 papers shown
Title
Low Entropy Communication in Multi-Agent Reinforcement Learning
Low Entropy Communication in Multi-Agent Reinforcement Learning
Lebin Yu
Yunbo Qiu
Qiexiang Wang
Xudong Zhang
Jian Wang
15
2
0
10 Feb 2023
Heterogeneous Graph Attention Networks for Learning Diverse
  Communication
Heterogeneous Graph Attention Networks for Learning Diverse Communication
Esmaeil Seraj
Zheyuan Wang
Rohan R. Paleja
Matt B Sklar
Anirudh Patel
Matthew C. Gombolay
32
19
0
21 Aug 2021
Mobile Robot Path Planning in Dynamic Environments through Globally
  Guided Reinforcement Learning
Mobile Robot Path Planning in Dynamic Environments through Globally Guided Reinforcement Learning
Binyu Wang
Zhe Liu
Qingbiao Li
Amanda Prorok
30
224
0
11 May 2020
1