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2108.03803
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Mis-spoke or mis-lead: Achieving Robustness in Multi-Agent Communicative Reinforcement Learning
9 August 2021
Wanqi Xue
Wei Qiu
Bo An
Zinovi Rabinovich
S. Obraztsova
C. Yeo
AAML
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Papers citing
"Mis-spoke or mis-lead: Achieving Robustness in Multi-Agent Communicative Reinforcement Learning"
7 / 7 papers shown
Title
Heterogeneous Multi-agent Zero-Shot Coordination by Coevolution
Ke Xue
Yutong Wang
Cong Guan
Lei Yuan
Haobo Fu
Qiang Fu
Chao Qian
Yang Yu
38
16
0
03 Jan 2025
SoK: Adversarial Machine Learning Attacks and Defences in Multi-Agent Reinforcement Learning
Maxwell Standen
Junae Kim
Claudia Szabo
AAML
21
5
0
11 Jan 2023
Certifiably Robust Policy Learning against Adversarial Communication in Multi-agent Systems
Yanchao Sun
Ruijie Zheng
Parisa Hassanzadeh
Yongyuan Liang
S. Feizi
Sumitra Ganesh
Furong Huang
AAML
19
10
0
21 Jun 2022
Intelligent Blockchain-based Edge Computing via Deep Reinforcement Learning: Solutions and Challenges
Dinh C. Nguyen
Van-Dinh Nguyen
Ming Ding
Symeon Chatzinotas
P. Pathirana
Aruna Seneviratne
O. Dobre
Albert Y. Zomaya
6
10
0
17 Jun 2022
Trust-based Consensus in Multi-Agent Reinforcement Learning Systems
Ho Long Fung
Victor-Alexandru Darvariu
Stephen Hailes
Mirco Musolesi
12
5
0
25 May 2022
Robust Reinforcement Learning on State Observations with Learned Optimal Adversary
Huan Zhang
Hongge Chen
Duane S. Boning
Cho-Jui Hsieh
52
161
0
21 Jan 2021
Adversarial Attacks On Multi-Agent Communication
James Tu
Tsun-Hsuan Wang
Jingkang Wang
S. Manivasagam
Mengye Ren
R. Urtasun
AAML
65
46
0
17 Jan 2021
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