In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, multiple agents share the same resources. When planning the use of these resources, agents need to deal with the uncertainty in these domains. Although several models and algorithms for such constrained multiagent planning problems under uncertainty have been proposed in the literature, it remains unclear when which algorithm can be applied. In this survey we conceptualize these domains and establish a generic problem class based on Markov decision processes. We identify and compare the conditions under which algorithms from the planning literature for problems in this class can be applied: whether constraints are soft or hard, whether agents a...
This thesis focuses on decision-theoretic reasoning and planning problems that arise when a group of...
In this paper we propose interaction-driven Markov games (IDMGs), a new model for multiagent decisio...
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...
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...
Developing intelligent decision making systems in the real world requires planning algorithms which ...
International audienceDespite the significant progress to extend Markov Decision Processes (MDP) to ...
Resource allocation is a ubiquitous problem that arises whenever scarce resources have to be distrib...
International audienceDespite the significant progress to extend Markov Decision Processes (MDP) to ...
Resource allocation is a ubiquitous problem that arises whenever scarce resources have to be distrib...
Bayesian methods for reinforcement learning (BRL) allow model uncertainty to be considered explicitl...
This thesis focuses on decision-theoretic reasoning and planning problems that arise when a group of...
Multi-agent planning problems with constraints on global resource consumption occur in several domai...
This thesis focuses on decision-theoretic reasoning and planning problems that arise when a group of...
In this paper we propose interaction-driven Markov games (IDMGs), a new model for multiagent decisio...
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...
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...
Developing intelligent decision making systems in the real world requires planning algorithms which ...
International audienceDespite the significant progress to extend Markov Decision Processes (MDP) to ...
Resource allocation is a ubiquitous problem that arises whenever scarce resources have to be distrib...
International audienceDespite the significant progress to extend Markov Decision Processes (MDP) to ...
Resource allocation is a ubiquitous problem that arises whenever scarce resources have to be distrib...
Bayesian methods for reinforcement learning (BRL) allow model uncertainty to be considered explicitl...
This thesis focuses on decision-theoretic reasoning and planning problems that arise when a group of...
Multi-agent planning problems with constraints on global resource consumption occur in several domai...
This thesis focuses on decision-theoretic reasoning and planning problems that arise when a group of...
In this paper we propose interaction-driven Markov games (IDMGs), a new model for multiagent decisio...
Resource constraints frequently complicate multi-agent planning problems. Existing algorithms for re...