Multi-agent planning problems with constraints on global resource consumption occur in several domains. Existing algorithms for solving Multi-agent Markov Decision Processes can compute policies that meet a resource constraint in expectation, but these policies provide no guarantees on the probability that a resource constraint violation will occur. We derive a method to bound constraint violation probabilities using Hoeffding's inequality. This method is applied to two existing approaches for computing policies satisfying constraints: the Constrained MDP framework and a Column Generation approach. We also introduce an algorithm to adaptively relax the bound up to a given maximum violation tolerance. Experiments on a hard toy problem show t...
Resource constraints frequently complicate multi-agent planning problems. Existing algorithms for re...
In this paper, we consider the problem of temporally coordinating the resource demands of a set of i...
This paper considers a novel approach to scalable mul-tiagent resource allocation in dynamic setting...
Multi-agent planning problems with constraints on global resource consumption occur in several domai...
Multi-agent planning problems with constraints on global resource consumption occur in several domai...
Multi-agent planning problems with constraints on global resource consumption occur in several domai...
Intelligent autonomous agents, designed to automate and simplify many aspects of our society, will i...
Intelligent autonomous agents, designed to automate and simplify many aspects of our society, will i...
Resource constraints frequently complicate multi-agent planning problems. Existing algorithms for re...
Resource constraints frequently complicate multi-agent planning problems. Existing algorithms for re...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
In several real-world domains it is required to plan ahead while there are finite resources availabl...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
Allocating scarce resources among agents to maximize global utility is, in general, com-putationally...
Resource constraints frequently complicate multi-agent planning problems. Existing algorithms for re...
In this paper, we consider the problem of temporally coordinating the resource demands of a set of i...
This paper considers a novel approach to scalable mul-tiagent resource allocation in dynamic setting...
Multi-agent planning problems with constraints on global resource consumption occur in several domai...
Multi-agent planning problems with constraints on global resource consumption occur in several domai...
Multi-agent planning problems with constraints on global resource consumption occur in several domai...
Intelligent autonomous agents, designed to automate and simplify many aspects of our society, will i...
Intelligent autonomous agents, designed to automate and simplify many aspects of our society, will i...
Resource constraints frequently complicate multi-agent planning problems. Existing algorithms for re...
Resource constraints frequently complicate multi-agent planning problems. Existing algorithms for re...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
In several real-world domains it is required to plan ahead while there are finite resources availabl...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
Allocating scarce resources among agents to maximize global utility is, in general, com-putationally...
Resource constraints frequently complicate multi-agent planning problems. Existing algorithms for re...
In this paper, we consider the problem of temporally coordinating the resource demands of a set of i...
This paper considers a novel approach to scalable mul-tiagent resource allocation in dynamic setting...