peer reviewedCoordination graphs offer a tractable framework for cooperative multiagent decision making by decomposing the global payoff function into a sum of local terms. Each agent can in principle select an optimal individual action based on a variable elimination algorithm performed on this graph. This results in optimal behavior for the group, but its worst-case time complexity is exponential in the number of agents, and it can be slow in densely connected graphs. Moreover, variable elimination is not appropriate for real-time systems as it requires that the complete algorithm terminates before a solution can be reported. In this paper, we investigate the max-plus algorithm, an instance of the belief propagation algorithm in Bayesian ...
This thesis is concerned with sequential decision making by multiple agents, whether they are acting...
In cooperative multi-agent sequential decision making under uncertainty, agents must coordinate in o...
In this dissertation, we provide efficient algorithms for modeling the behavior of a single agent, m...
Coordinationgraphsprovideatractableframe- work for cooperative multiagent decision making by decom- ...
peer reviewedIn this article we describe a set of scalable techniques for learning the behavior of a...
We discuss settings where several "agents" combine efforts to solve problems. This is a we...
In team Markov games research, it is difficult for an individual agent to calculate the reward of co...
Learning to coordinate between multiple agents is an important problem in many reinforcement learnin...
In this article, we propose new algorithms for multi-objective coordination graphs (MO- CoGs). Key t...
peer reviewedSince traffic jams are ubiquitous in the modern world, optimizing, the behavior of traf...
Bayesian games can be used to model single-shot decision problems in which agents only possess incom...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mechanical Engineering, 2005.This e...
Applications of deep reinforcement learning in multi-agent systems are a rapidly developing scientif...
peer reviewedWithin a group of cooperating agents the decision making of an individual agent depends...
Coordination graph is a promising approach to model agent collaboration in multi-agent reinforcement...
This thesis is concerned with sequential decision making by multiple agents, whether they are acting...
In cooperative multi-agent sequential decision making under uncertainty, agents must coordinate in o...
In this dissertation, we provide efficient algorithms for modeling the behavior of a single agent, m...
Coordinationgraphsprovideatractableframe- work for cooperative multiagent decision making by decom- ...
peer reviewedIn this article we describe a set of scalable techniques for learning the behavior of a...
We discuss settings where several "agents" combine efforts to solve problems. This is a we...
In team Markov games research, it is difficult for an individual agent to calculate the reward of co...
Learning to coordinate between multiple agents is an important problem in many reinforcement learnin...
In this article, we propose new algorithms for multi-objective coordination graphs (MO- CoGs). Key t...
peer reviewedSince traffic jams are ubiquitous in the modern world, optimizing, the behavior of traf...
Bayesian games can be used to model single-shot decision problems in which agents only possess incom...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mechanical Engineering, 2005.This e...
Applications of deep reinforcement learning in multi-agent systems are a rapidly developing scientif...
peer reviewedWithin a group of cooperating agents the decision making of an individual agent depends...
Coordination graph is a promising approach to model agent collaboration in multi-agent reinforcement...
This thesis is concerned with sequential decision making by multiple agents, whether they are acting...
In cooperative multi-agent sequential decision making under uncertainty, agents must coordinate in o...
In this dissertation, we provide efficient algorithms for modeling the behavior of a single agent, m...