abstract: The problem of modeling and controlling the distribution of a multi-agent system has recently evolved into an interdisciplinary effort. When the agent population is very large, i.e., at least on the order of hundreds of agents, it is important that techniques for analyzing and controlling the system scale well with the number of agents. One scalable approach to characterizing the behavior of a multi-agent system is possible when the agents' states evolve over time according to a Markov process. In this case, the density of agents over space and time is governed by a set of difference or differential equations known as a {\it mean-field model}, whose parameters determine the stochastic control policies of the individual agents. The...
In this paper we model the role of a government of a large population as a mean field optimal contro...
Collaborative multiagent robotic systems, where agents coordinate by modifying a shared environment ...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
textThis report describes a method to control the density distribution of a large number of autonomo...
Thesis (Ph.D.)--University of Washington, 2017-08The control of systems with autonomous mobile agent...
This paper provides a decentralized approach for the control of a population of N agents to minimize...
This self-contained text develops a Markov chain approach that makes the rigorous analysis of a clas...
Mean-field models are a popular tool in a variety of fields. They provide an un-derstanding of the i...
abstract: Numerous works have addressed the control of multi-robot systems for coverage, mapping, na...
A Markovian Agent Model (MAM) is an agent-based spatio-temporal analytical formalism aimed to model ...
International audienceMean-field models are a popular tool in a variety of fields. They provide an u...
Abstract—This paper describes an approach to the modeling and con-trol of multiagent populations com...
Abstract—This paper formulates a self-organization algorithm to address the problem of global behavi...
While formal, decision-theoretic models such as the Markov Decision Process (MDP) have greatly advan...
Cooperative planning control is an active topic of research, with many practical applications includ...
In this paper we model the role of a government of a large population as a mean field optimal contro...
Collaborative multiagent robotic systems, where agents coordinate by modifying a shared environment ...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
textThis report describes a method to control the density distribution of a large number of autonomo...
Thesis (Ph.D.)--University of Washington, 2017-08The control of systems with autonomous mobile agent...
This paper provides a decentralized approach for the control of a population of N agents to minimize...
This self-contained text develops a Markov chain approach that makes the rigorous analysis of a clas...
Mean-field models are a popular tool in a variety of fields. They provide an un-derstanding of the i...
abstract: Numerous works have addressed the control of multi-robot systems for coverage, mapping, na...
A Markovian Agent Model (MAM) is an agent-based spatio-temporal analytical formalism aimed to model ...
International audienceMean-field models are a popular tool in a variety of fields. They provide an u...
Abstract—This paper describes an approach to the modeling and con-trol of multiagent populations com...
Abstract—This paper formulates a self-organization algorithm to address the problem of global behavi...
While formal, decision-theoretic models such as the Markov Decision Process (MDP) have greatly advan...
Cooperative planning control is an active topic of research, with many practical applications includ...
In this paper we model the role of a government of a large population as a mean field optimal contro...
Collaborative multiagent robotic systems, where agents coordinate by modifying a shared environment ...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...