Multi-agent planning in stochastic environments can be framed formally as a decentralized Markov decision problem. Many real-life distributed problems that arise in manufacturing, multi-robot coordination and information gathering scenarios can be formalized using this framework. However, finding the optimal solution in the general case is hard, limiting the applicability of recently developed algorithms. This paper provides a practical approach for solving decentralized control problems when communication among the decision makers is possible, but costly. We develop the notion of communication-based mechanism that allows us to decompose a decentralized MDP into multiple single-agent problems. In this framework, referred to as decentralized...
Planning for distributed agents with partial state information is considered from a decision- theore...
Planning for distributed agents with partial state information is considered from a decisiontheoreti...
Planning for distributed agents with partial state information is considered from a decisiontheoreti...
Multi-agent planning in stochastic environments can be framed formally as a decen-tralized Markov de...
Multi-agent planning in stochastic environments can be framed formally as a decen-tralized Markov de...
While formal, decision-theoretic models such as the Markov Decision Process (MDP) have greatly advan...
Coordination of distributed entities is required for problems arising in many areas, including multi...
This paper presents a probabilistic framework for synthesizing control policies for general multi-ro...
International audienceCommunication is a natural way to improve coordination in multi-agent systems ...
Abstract — This paper presents a probabilistic framework for synthesizing control policies for gener...
International audienceOptimizing the operation of cooperative multi-agent systems that can deal with...
International audienceOptimizing the operation of cooperative multi-agent systems that can deal with...
There has been substantial progress with formal models for sequential decision making by individual ...
We describe a probabilistic framework for synthesizing con-trol policies for general multi-robot sys...
We describe a probabilistic framework for synthesizing con-trol policies for general multi-robot sys...
Planning for distributed agents with partial state information is considered from a decision- theore...
Planning for distributed agents with partial state information is considered from a decisiontheoreti...
Planning for distributed agents with partial state information is considered from a decisiontheoreti...
Multi-agent planning in stochastic environments can be framed formally as a decen-tralized Markov de...
Multi-agent planning in stochastic environments can be framed formally as a decen-tralized Markov de...
While formal, decision-theoretic models such as the Markov Decision Process (MDP) have greatly advan...
Coordination of distributed entities is required for problems arising in many areas, including multi...
This paper presents a probabilistic framework for synthesizing control policies for general multi-ro...
International audienceCommunication is a natural way to improve coordination in multi-agent systems ...
Abstract — This paper presents a probabilistic framework for synthesizing control policies for gener...
International audienceOptimizing the operation of cooperative multi-agent systems that can deal with...
International audienceOptimizing the operation of cooperative multi-agent systems that can deal with...
There has been substantial progress with formal models for sequential decision making by individual ...
We describe a probabilistic framework for synthesizing con-trol policies for general multi-robot sys...
We describe a probabilistic framework for synthesizing con-trol policies for general multi-robot sys...
Planning for distributed agents with partial state information is considered from a decision- theore...
Planning for distributed agents with partial state information is considered from a decisiontheoreti...
Planning for distributed agents with partial state information is considered from a decisiontheoreti...