In this paper we revise reinforcement learning and adaptiveness in multi-agent systems from an evolutionary game theoretic perspective. More precisely we show there is a triangular relation between the fields of multi-agent systems, reinforcement learning and evolutionary game theory. We illustrate how these new insights can contribute to a better understanding of learning in mas and to new improved learning algorithms. All three fields are introduced in a self-contained manner. Each relation is discussed in detail with the necessary background information to understand it, along with major references to relevant work
This paper presents the dynamics of multiple learning agents from an evolutionary game theoretic per...
This thesis advances game theory by formally analysing the implications of replacing some of its mos...
Although well understood in the single-agent framework, the use of traditional reinforcement learnin...
In this paper we revise reinforcement learning and adaptiveness in multi-agent systems from an evolu...
In this paper we survey the basics of reinforcement learning and (evolutionary) game theory, applied...
Multi-agent learning plays an increasingly important role in solving complex dynamic problems in to-...
In this paper, we investigate reinforcement learning (rl) in multi-agent systems (mas) from an evolu...
This paper discusses If multi-agent learning is the answer what is the question? [Y. Shoham, R. Powe...
AbstractThis paper discusses If multi-agent learning is the answer, what is the question? [Y. Shoham...
This paper discusses If multi-agent learning is the answer, what is the question? [Y. Shoham, R. Pow...
The present thesis considers two biologically significant processes: the evolution of populations of...
This paper presents the dynamics of multiple learning agents from an evolutionary game theoretic per...
This paper presents the dynamics of multiple learning agents from an evolutionary game theoretic per...
This paper presents the dynamics of multiple learning agents from an evolutionary game theoretic per...
This thesis advances game theory by formally analysing the implications of replacing some of its mos...
Although well understood in the single-agent framework, the use of traditional reinforcement learnin...
In this paper we revise reinforcement learning and adaptiveness in multi-agent systems from an evolu...
In this paper we survey the basics of reinforcement learning and (evolutionary) game theory, applied...
Multi-agent learning plays an increasingly important role in solving complex dynamic problems in to-...
In this paper, we investigate reinforcement learning (rl) in multi-agent systems (mas) from an evolu...
This paper discusses If multi-agent learning is the answer what is the question? [Y. Shoham, R. Powe...
AbstractThis paper discusses If multi-agent learning is the answer, what is the question? [Y. Shoham...
This paper discusses If multi-agent learning is the answer, what is the question? [Y. Shoham, R. Pow...
The present thesis considers two biologically significant processes: the evolution of populations of...
This paper presents the dynamics of multiple learning agents from an evolutionary game theoretic per...
This paper presents the dynamics of multiple learning agents from an evolutionary game theoretic per...
This paper presents the dynamics of multiple learning agents from an evolutionary game theoretic per...
This thesis advances game theory by formally analysing the implications of replacing some of its mos...
Although well understood in the single-agent framework, the use of traditional reinforcement learnin...