Reinforcement Learning (RL) is a well-known technique to train autonomous agents through interactions with the environment. However, the learning process has a high sample-complexity to infer an effective policy, especially when multiple agents are simultaneously actuating in the environment. We here propose to take advantage of previous knowledge, so as to accelerate learning in multiagent RL problems. Agents may reuse knowledge gathered from previously solved tasks, and they may also receive guidance from more experienced friendly agents to learn faster. However, specifying a framework to integrate knowledge reuse into the learning process requires answering challenging research questions, such as: How to abstract task solutions to reuse ...
O aprendizado por reforço é uma técnica bem sucedida, porém lenta, para treinar agentes autônomos. A...
This paper is devoted to the problem of reinforcement learning in multi-agent systems. Multi-agent s...
Os métodos de Aprendizagem por Reforço (AR) se mostram adequados para problemas de tomadas de decisõ...
Reinforcement Learning (RL) is a well-known technique to train autonomous agents through interaction...
With the rise of Deep Learning the field of Artificial Intelligence (AI) Research has entered a new ...
When designing intelligent agents that must solve sequential decision problems, often we do not have...
Reinforcement Learning (RL) is a widely used solution for sequential decision-making problems and ha...
Autonomous Agents and Multi-Agent Systems published a piece about the Inter-agent Transfer Learning ...
Recently, deep reinforcement learning (RL) algorithms have achieved significant progress in the mult...
We propose a new paradigm for collective learning in multi-agent systems (MAS) as a solution to the ...
Agents, physical and virtual entities that interact with theirenvironment, are becoming increasingly...
The emergence of Multiagent systems brought new challenges to the field of Machine Learning, as it d...
Increased interaction between computer systems has modified the traditional way to analyze and devel...
Deep Reinforcement Learning (RL) algorithms can solve complex sequential decision-making tasks succe...
© 2019, Springer Nature Switzerland AG. Reinforcement learning agents can be helped by the knowledge...
O aprendizado por reforço é uma técnica bem sucedida, porém lenta, para treinar agentes autônomos. A...
This paper is devoted to the problem of reinforcement learning in multi-agent systems. Multi-agent s...
Os métodos de Aprendizagem por Reforço (AR) se mostram adequados para problemas de tomadas de decisõ...
Reinforcement Learning (RL) is a well-known technique to train autonomous agents through interaction...
With the rise of Deep Learning the field of Artificial Intelligence (AI) Research has entered a new ...
When designing intelligent agents that must solve sequential decision problems, often we do not have...
Reinforcement Learning (RL) is a widely used solution for sequential decision-making problems and ha...
Autonomous Agents and Multi-Agent Systems published a piece about the Inter-agent Transfer Learning ...
Recently, deep reinforcement learning (RL) algorithms have achieved significant progress in the mult...
We propose a new paradigm for collective learning in multi-agent systems (MAS) as a solution to the ...
Agents, physical and virtual entities that interact with theirenvironment, are becoming increasingly...
The emergence of Multiagent systems brought new challenges to the field of Machine Learning, as it d...
Increased interaction between computer systems has modified the traditional way to analyze and devel...
Deep Reinforcement Learning (RL) algorithms can solve complex sequential decision-making tasks succe...
© 2019, Springer Nature Switzerland AG. Reinforcement learning agents can be helped by the knowledge...
O aprendizado por reforço é uma técnica bem sucedida, porém lenta, para treinar agentes autônomos. A...
This paper is devoted to the problem of reinforcement learning in multi-agent systems. Multi-agent s...
Os métodos de Aprendizagem por Reforço (AR) se mostram adequados para problemas de tomadas de decisõ...