International audienceWe propose a distributed upper confidence bound approach, DUCT, for solving distributed constraint optimisation problems. We compare four variants of this approach with a baseline random sampling algorithm, as well as other complete and incomplete algorithms for DCOPs. Under general assumptions, we theoretically show that the solution found by DUCT after T steps is approximately T −1-close to the optimal. Experimentally, we show that DUCT matches the optimal solution found by the well-known DPOP and O-DPOP algorithms on moderate-size problems, while always requiring less agent communication. For larger problems, where DPOP fails, we show that DUCT produces significantly better solutions than local, incomplete algorithm...
This paper presents a new distributed constraint optimization algorithm called LSPA, which can be us...
Abstract. This paper proposes minimum p{dominance as an appropri-ate measure of solution robustness ...
The DCOP model has gained momentum in recent years thanks to its ability to capture problems that ar...
International audienceWe propose a distributed upper confidence bound approach, DUCT, for solving di...
We propose a distributed upper confidence bound approach, DUCT, for solving distributed constraint o...
The Upper Confidence Bounds (UCB) algorithm is a well-known near-optimal strategy for the stochastic...
Researchers have used distributed constraint optimization problems (DCOPs) to model various multi-ag...
Although algorithms for Distributed Constraint Optimization Problems (DCOPs) have emerged as a key ...
Abstract- Recently, Distributed Constraint Optimization Problems (DCOP) have been drawing a growing ...
In the proposed thesis, we study Distributed Constraint Optimization Problems (DCOPs), which are pro...
Distributed constraint optimization (DCOP) is a popular formal-ism for modeling cooperative multi-ag...
We introduce a new framework for solving distributed constraint optimization problems that extend th...
Abstract. The field of Distributed Constraint Optimization has gained momen-tum in recent years, tha...
UnrestrictedDistributed constraint optimization (DCOP) is a useful framework for cooperative multiag...
Abstract. The DCOP model has gained momentum in recent years thanks to its ability to capture proble...
This paper presents a new distributed constraint optimization algorithm called LSPA, which can be us...
Abstract. This paper proposes minimum p{dominance as an appropri-ate measure of solution robustness ...
The DCOP model has gained momentum in recent years thanks to its ability to capture problems that ar...
International audienceWe propose a distributed upper confidence bound approach, DUCT, for solving di...
We propose a distributed upper confidence bound approach, DUCT, for solving distributed constraint o...
The Upper Confidence Bounds (UCB) algorithm is a well-known near-optimal strategy for the stochastic...
Researchers have used distributed constraint optimization problems (DCOPs) to model various multi-ag...
Although algorithms for Distributed Constraint Optimization Problems (DCOPs) have emerged as a key ...
Abstract- Recently, Distributed Constraint Optimization Problems (DCOP) have been drawing a growing ...
In the proposed thesis, we study Distributed Constraint Optimization Problems (DCOPs), which are pro...
Distributed constraint optimization (DCOP) is a popular formal-ism for modeling cooperative multi-ag...
We introduce a new framework for solving distributed constraint optimization problems that extend th...
Abstract. The field of Distributed Constraint Optimization has gained momen-tum in recent years, tha...
UnrestrictedDistributed constraint optimization (DCOP) is a useful framework for cooperative multiag...
Abstract. The DCOP model has gained momentum in recent years thanks to its ability to capture proble...
This paper presents a new distributed constraint optimization algorithm called LSPA, which can be us...
Abstract. This paper proposes minimum p{dominance as an appropri-ate measure of solution robustness ...
The DCOP model has gained momentum in recent years thanks to its ability to capture problems that ar...