Distributed learning is the learning process of multiple autonomous agents in a varying environment, where each agent has only partial information about the global task. In this paper, we investigate the influence of different reinforcement signals (local and global) and team diversity (homogeneous and heterogeneous agents) on the learned solutions. We compare the learned solutions with those obtained by systematic search in a simple case study in which pairs of agents have to collaborate in order to solve the task without any explicit communication. The results show that policies which allow teammates to specialize find an adequate diversity of the team and, in general, achieve similar or better performances than policies which force homog...
We present a means in which individual members of a multi-robot team may allocate themselves into sp...
Embodied evolutionary robotics is an on-line distributed learning method used in collective robotics...
Research works in collective problem-solving usually assume fixed communication structures and explo...
Distributed learning is the learning process of multiple autonomous agents in a varying environment,...
This paper addresses qualitative and quantitative diversity and specialization issues in the framewo...
This paper addresses qualitative and quantitative diversity and specialization issues in the framewo...
This paper describes research investigating behavioral specialization in learning robot teams. Each ...
Specialization is a common feature in animal societies that leads to an improvement in the fitness o...
In this work, we study behavioral specialization in a swarm of autonomous robots. In the studied swa...
International audienceThis paper addresses the problem of learning cooperative strategies in swarm r...
This thesis addresses the problem of learning in physical heterogeneous multi-agent systems (MAS) an...
In this paper we focus on the problem of designing a collective of autonomous agents that individual...
This paper demonstrates the need to develop more suitable decentralized reinforcement learning metho...
Cooperative decentralized multirobot learning refers to the use of multiple learning entities to lea...
Cooperative team learning can be categorized as heterogeneous, where the agents learn specialized be...
We present a means in which individual members of a multi-robot team may allocate themselves into sp...
Embodied evolutionary robotics is an on-line distributed learning method used in collective robotics...
Research works in collective problem-solving usually assume fixed communication structures and explo...
Distributed learning is the learning process of multiple autonomous agents in a varying environment,...
This paper addresses qualitative and quantitative diversity and specialization issues in the framewo...
This paper addresses qualitative and quantitative diversity and specialization issues in the framewo...
This paper describes research investigating behavioral specialization in learning robot teams. Each ...
Specialization is a common feature in animal societies that leads to an improvement in the fitness o...
In this work, we study behavioral specialization in a swarm of autonomous robots. In the studied swa...
International audienceThis paper addresses the problem of learning cooperative strategies in swarm r...
This thesis addresses the problem of learning in physical heterogeneous multi-agent systems (MAS) an...
In this paper we focus on the problem of designing a collective of autonomous agents that individual...
This paper demonstrates the need to develop more suitable decentralized reinforcement learning metho...
Cooperative decentralized multirobot learning refers to the use of multiple learning entities to lea...
Cooperative team learning can be categorized as heterogeneous, where the agents learn specialized be...
We present a means in which individual members of a multi-robot team may allocate themselves into sp...
Embodied evolutionary robotics is an on-line distributed learning method used in collective robotics...
Research works in collective problem-solving usually assume fixed communication structures and explo...