International audienceDecentralized planning in uncertain environments is a complex task generally dealt with by using a decision-theoretic approach, mainly through the framework of Decentralized Partially Observable Markov Decision Processes (DEC-POMDPs). Although DEC-POMDPS are a general and powerful modeling tool, solving them is a task with an overwhelming complexity that can be doubly exponential, using either Dynamic Programming or Forward Search methods. In this paper, we study an alternate formulation of DEC-POMDPs relying on a sequence form representation of policies. From this formulation, we show how to derive Mixed Integer Linear Programming (MILP) problems that, once solved, give exact optimal solutions to the DEC-POMDPs. We sh...
International audienceDecentralized partially observable Markov decision processes (Dec-POMDPs) are ...
Nous abordons dans cette thèse la résolution optimale des processus de décision markoviens décentral...
The subject of this thesis is the optimal resolution of decentralized Markov decision processes (DEC...
International audienceDecentralized planning in uncertain environments is a complex task generally d...
Decentralized planning in uncertain environments is a complex task generally dealt with by using a d...
In this thesis, we study the problem of the optimal decentralized control of a partially observed Ma...
International audienceWe consider the problem of finding an n-agent joint-policy for the optimal fin...
We consider the problem of finding an n-agent joint-policy for the optimal finite-horizon control of...
International audienceDecentralized partially observable Markov decision processes (Dec-POMDPs) prov...
We advance the state of the art in optimal solving of decentralized partially observable Markov deci...
Optimally solving decentralized partially observ-able Markov decision processes (Dec-POMDPs) is a ha...
We present a first search algorithm for solving decentralized partially-observable Markov decision p...
We address a long-standing open problem of reinforcement learning in decentralized partiallyobservab...
We advance the state of the art in optimal solving of decentralized partially observable Markov deci...
In the domain of decentralized Markov decision processes, we develop the first complete and optimal ...
International audienceDecentralized partially observable Markov decision processes (Dec-POMDPs) are ...
Nous abordons dans cette thèse la résolution optimale des processus de décision markoviens décentral...
The subject of this thesis is the optimal resolution of decentralized Markov decision processes (DEC...
International audienceDecentralized planning in uncertain environments is a complex task generally d...
Decentralized planning in uncertain environments is a complex task generally dealt with by using a d...
In this thesis, we study the problem of the optimal decentralized control of a partially observed Ma...
International audienceWe consider the problem of finding an n-agent joint-policy for the optimal fin...
We consider the problem of finding an n-agent joint-policy for the optimal finite-horizon control of...
International audienceDecentralized partially observable Markov decision processes (Dec-POMDPs) prov...
We advance the state of the art in optimal solving of decentralized partially observable Markov deci...
Optimally solving decentralized partially observ-able Markov decision processes (Dec-POMDPs) is a ha...
We present a first search algorithm for solving decentralized partially-observable Markov decision p...
We address a long-standing open problem of reinforcement learning in decentralized partiallyobservab...
We advance the state of the art in optimal solving of decentralized partially observable Markov deci...
In the domain of decentralized Markov decision processes, we develop the first complete and optimal ...
International audienceDecentralized partially observable Markov decision processes (Dec-POMDPs) are ...
Nous abordons dans cette thèse la résolution optimale des processus de décision markoviens décentral...
The subject of this thesis is the optimal resolution of decentralized Markov decision processes (DEC...