Mean field theory provides an effective way of scaling multiagent reinforcement learning algorithms to environments with many agents that can be abstracted by a virtual mean agent. In this paper, we extend mean field multiagent algorithms to multiple types. The types enable the relaxation of a core assumption in mean field reinforcement learning, which is that all agents in the environment are playing almost similar strategies and have the same goal. We conduct experiments on three different testbeds for the field of many agent reinforcement learning, based on the standard MAgents framework. We consider two different kinds of mean field environments: a) Games where agents belong to predefined types that are known a priori and b) Games where...
With great success in Reinforcement Learning’s application to a suite of single-agent environments, ...
Multi-agent reinforcement learning methods have shown remarkable potential in solving complex multi-...
Mean Field Games (MFGs) can potentially scale multi-agent systems to extremely large populations of ...
Multiagent reinforcement learning algorithms have not been widely adopted in large scale environment...
Existing multi-agent reinforcement learning methods are limited typically to a small number of agent...
Multi-agent reinforcement learning (MARL) has seen much success in the past decade. However, these m...
From understanding the spreading of an epidemic to optimizing traffic flow or biological swarming, m...
Learning for efficient coordination in large-scale multiagent systems suffers from the problem of th...
Many algorithms exist for learning how to act in a repeated game and most have theoretical guarantee...
In this paper, we present a model of a game among teams. Each team consists of a homogeneous populat...
Multi-agent reinforcement learning (RL) solves the problem of how each agent should behave optimally...
Mean field control (MFC) is an effective way to mitigate the curse of dimensionality of cooperative ...
This paper surveys the field of deep multiagent reinforcement learning. The combination of deep neur...
Learning by experience in Multi-Agent Systems (MAS) is a difficult and exciting task, due to the lac...
In this paper, we examine a machine learning technique presented by Ishii et al. used to allow for l...
With great success in Reinforcement Learning’s application to a suite of single-agent environments, ...
Multi-agent reinforcement learning methods have shown remarkable potential in solving complex multi-...
Mean Field Games (MFGs) can potentially scale multi-agent systems to extremely large populations of ...
Multiagent reinforcement learning algorithms have not been widely adopted in large scale environment...
Existing multi-agent reinforcement learning methods are limited typically to a small number of agent...
Multi-agent reinforcement learning (MARL) has seen much success in the past decade. However, these m...
From understanding the spreading of an epidemic to optimizing traffic flow or biological swarming, m...
Learning for efficient coordination in large-scale multiagent systems suffers from the problem of th...
Many algorithms exist for learning how to act in a repeated game and most have theoretical guarantee...
In this paper, we present a model of a game among teams. Each team consists of a homogeneous populat...
Multi-agent reinforcement learning (RL) solves the problem of how each agent should behave optimally...
Mean field control (MFC) is an effective way to mitigate the curse of dimensionality of cooperative ...
This paper surveys the field of deep multiagent reinforcement learning. The combination of deep neur...
Learning by experience in Multi-Agent Systems (MAS) is a difficult and exciting task, due to the lac...
In this paper, we examine a machine learning technique presented by Ishii et al. used to allow for l...
With great success in Reinforcement Learning’s application to a suite of single-agent environments, ...
Multi-agent reinforcement learning methods have shown remarkable potential in solving complex multi-...
Mean Field Games (MFGs) can potentially scale multi-agent systems to extremely large populations of ...