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Calibration of Shared Equilibria in General Sum Partially Observable
  Markov Games

Calibration of Shared Equilibria in General Sum Partially Observable Markov Games

23 June 2020
N. Vadori
Sumitra Ganesh
P. Reddy
Manuela Veloso
ArXivPDFHTML

Papers citing "Calibration of Shared Equilibria in General Sum Partially Observable Markov Games"

7 / 7 papers shown
Title
ADAGE: A generic two-layer framework for adaptive agent based modelling
ADAGE: A generic two-layer framework for adaptive agent based modelling
Benjamin Patrick Evans
Sihan Zeng
Sumitra Ganesh
Leo Ardon
56
0
0
17 Jan 2025
Towards Multi-Agent Reinforcement Learning driven Over-The-Counter
  Market Simulations
Towards Multi-Agent Reinforcement Learning driven Over-The-Counter Market Simulations
N. Vadori
Leo Ardon
Sumitra Ganesh
Thomas Spooner
Selim Amrouni
Jared Vann
Mengda Xu
Zeyu Zheng
T. Balch
Manuela Veloso
18
16
0
13 Oct 2022
Phantom -- A RL-driven multi-agent framework to model complex systems
Phantom -- A RL-driven multi-agent framework to model complex systems
Leo Ardon
Jared Vann
Deepeka Garg
Thomas Spooner
Sumitra Ganesh
27
7
0
12 Oct 2022
Towards a fully RL-based Market Simulator
Towards a fully RL-based Market Simulator
Leo Ardon
N. Vadori
Thomas Spooner
Mengda Xu
Jared Vann
Sumitra Ganesh
32
18
0
13 Oct 2021
Mean-Field Multi-Agent Reinforcement Learning: A Decentralized Network
  Approach
Mean-Field Multi-Agent Reinforcement Learning: A Decentralized Network Approach
Haotian Gu
Xin Guo
Xiaoli Wei
Renyuan Xu
OOD
35
36
0
05 Aug 2021
Learning to Optimize: A Primer and A Benchmark
Learning to Optimize: A Primer and A Benchmark
Tianlong Chen
Xiaohan Chen
Wuyang Chen
Howard Heaton
Jialin Liu
Zhangyang Wang
W. Yin
40
225
0
23 Mar 2021
Stabilising Experience Replay for Deep Multi-Agent Reinforcement
  Learning
Stabilising Experience Replay for Deep Multi-Agent Reinforcement Learning
Jakob N. Foerster
Nantas Nardelli
Gregory Farquhar
Triantafyllos Afouras
Philip H. S. Torr
Pushmeet Kohli
Shimon Whiteson
OffRL
117
595
0
28 Feb 2017
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