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ForMIC: Foraging via Multiagent RL with Implicit Communication
v1v2v3v4 (latest)

ForMIC: Foraging via Multiagent RL with Implicit Communication

15 June 2020
Samuel Shaw
Emerson Wenzel
Alexis Walker
Guillaume Sartoretti
    OffRL
ArXiv (abs)PDFHTML

Papers citing "ForMIC: Foraging via Multiagent RL with Implicit Communication"

7 / 7 papers shown
Unifying Agent Interaction and World Information for Multi-agent Coordination
Unifying Agent Interaction and World Information for Multi-agent Coordination
Dongsu Lee
Daehee Lee
Yaru Niu
Honguk Woo
Amy Zhang
Ding Zhao
322
0
0
29 Sep 2025
Cooperative Hybrid Multi-Agent Pathfinding Based on Shared Exploration Maps
Cooperative Hybrid Multi-Agent Pathfinding Based on Shared Exploration Maps
Ning Liu
Sen Shen
Xiangrui Kong
Hongtao Zhang
Thomas Braunl
158
4
0
28 Mar 2025
Learning Policies for Dynamic Coalition Formation in Multi-Robot Task Allocation
Learning Policies for Dynamic Coalition Formation in Multi-Robot Task AllocationIEEE Robotics and Automation Letters (RA-L), 2024
Lucas C. D. Bezerra
Ataíde M. G. dos Santos
Shinkyu Park
312
3
0
29 Dec 2024
Learning to Communicate Through Implicit Communication Channels
Learning to Communicate Through Implicit Communication Channels
Han Wang
Binbin Chen
Tieying Zhang
Baoxiang Wang
154
0
0
03 Nov 2024
Solving Multi-Entity Robotic Problems Using Permutation Invariant Neural
  Networks
Solving Multi-Entity Robotic Problems Using Permutation Invariant Neural Networks
Tianxu An
Joonho Lee
Marko Bjelonic
Flavio De Vincenti
Marco Hutter
329
4
0
28 Feb 2024
SCRIMP: Scalable Communication for Reinforcement- and
  Imitation-Learning-Based Multi-Agent Pathfinding
SCRIMP: Scalable Communication for Reinforcement- and Imitation-Learning-Based Multi-Agent PathfindingIEEE/RJS International Conference on Intelligent RObots and Systems (IROS), 2023
Yutong Wang
Bairan Xiang
Shinan Huang
Guillaume Sartoretti
336
66
0
01 Mar 2023
Distributed Reinforcement Learning for Robot Teams: A Review
Distributed Reinforcement Learning for Robot Teams: A ReviewCurrent Robotics Reports (CRR), 2022
Yutong Wang
Mehul Damani
Pamela Wang
Yuhong Cao
Guillaume Sartoretti
295
38
0
07 Apr 2022
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