Cooperative decentralized multirobot learning refers to the use of multiple learning entities to learn optimal solutions for an overall multirobot system. We demonstrate that traditional single-robot learning theory can be successfully used with multirobot systems, but only under certain conditions. The success and the effectiveness of single-robot learning algorithms in multirobot systems are potentially affected by various factors that we classify into two groups: the nature of the robots and the nature of the learning. Incorrect set-up of these factors may lead to undesirable results. In this paper, we systematically test the effect of varying five common factors (model of the value function, reward scope, delay of global information, di...
Multi-Agent Reinforcement Learning (MARL) algorithms face two main difficulties: the curse of dimens...
Cooperative multi-agent systems problems are ones in which several agents attempt, through their int...
Abstract. Reinforcement learning has been widely applied to solve a diverse set of learning tasks, f...
Cooperative decentralized multirobot learning refers to the use of multiple learning entities to lea...
Cooperative decentralized multirobot learning refers to the use of multiple learning entities to le...
The effectiveness of multirobot learning in achieving optimal, cooperative solutions is potentially ...
Decentralized multirobot learning refers to the use of multiple learning entities to achieve the opt...
Decentralized multirobot learning refers to the use of multiple learning entities to achieve the opt...
Learning can be an effective way for robot systems to deal with dynamic environments and changing ta...
Learning can be an effective way for robot systems to deal with dynamic environments and changing t...
Reinforcement learning has been widely applied to solve a diverse set of learning tasks, from board ...
This article describes three different methods for introducing machine learning into a hybrid delibe...
Despite the advancement of research and development on multi-robot teams, a key challenge still rema...
An important need in multi-robot systems is the development of me hanisms that enable robot teams to...
This thesis investigates cooperative and intelligent control of autonomous multi-robot systems in a ...
Multi-Agent Reinforcement Learning (MARL) algorithms face two main difficulties: the curse of dimens...
Cooperative multi-agent systems problems are ones in which several agents attempt, through their int...
Abstract. Reinforcement learning has been widely applied to solve a diverse set of learning tasks, f...
Cooperative decentralized multirobot learning refers to the use of multiple learning entities to lea...
Cooperative decentralized multirobot learning refers to the use of multiple learning entities to le...
The effectiveness of multirobot learning in achieving optimal, cooperative solutions is potentially ...
Decentralized multirobot learning refers to the use of multiple learning entities to achieve the opt...
Decentralized multirobot learning refers to the use of multiple learning entities to achieve the opt...
Learning can be an effective way for robot systems to deal with dynamic environments and changing ta...
Learning can be an effective way for robot systems to deal with dynamic environments and changing t...
Reinforcement learning has been widely applied to solve a diverse set of learning tasks, from board ...
This article describes three different methods for introducing machine learning into a hybrid delibe...
Despite the advancement of research and development on multi-robot teams, a key challenge still rema...
An important need in multi-robot systems is the development of me hanisms that enable robot teams to...
This thesis investigates cooperative and intelligent control of autonomous multi-robot systems in a ...
Multi-Agent Reinforcement Learning (MARL) algorithms face two main difficulties: the curse of dimens...
Cooperative multi-agent systems problems are ones in which several agents attempt, through their int...
Abstract. Reinforcement learning has been widely applied to solve a diverse set of learning tasks, f...