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Coordination in Adversarial Sequential Team Games via Multi-Agent Deep
  Reinforcement Learning

Coordination in Adversarial Sequential Team Games via Multi-Agent Deep Reinforcement Learning

16 December 2019
A. Celli
Marco Ciccone
Raffaele Bongo
N. Gatti
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Papers citing "Coordination in Adversarial Sequential Team Games via Multi-Agent Deep Reinforcement Learning"

2 / 2 papers shown
Title
Towards Learning Scalable Agile Dynamic Motion Planning for Robosoccer Teams with Policy Optimization
Towards Learning Scalable Agile Dynamic Motion Planning for Robosoccer Teams with Policy Optimization
Brandon Ho
Batuhan Altundas
Matthew C. Gombolay
79
0
0
08 Feb 2025
First-Order Algorithms for Nonlinear Generalized Nash Equilibrium
  Problems
First-Order Algorithms for Nonlinear Generalized Nash Equilibrium Problems
Michael I. Jordan
Tianyi Lin
Manolis Zampetakis
16
23
0
07 Apr 2022
1