Learning in a multiagent environment is complicated by the fact that as other agents learn, the environment effectively changes. Moreover, other agents' actions are often not directly observable, and the actions taken by the learning agent can strongly bias which range of behaviors are encountered. We define the concept of a conjectural equilibrium, where all agents' expectations are realized, and each agent responds optimally to its expectations. We present a generic multiagent exchange situation, in which competitive behavior constitutes a conjectural equilibrium. We then introduce an agent that executes a more sophisticated strategic learning strategy, building a model of the response of other agents. We find that the system reliably con...
We present new Multiagent learning (MAL) algorithms with the general philosophy of policy convergenc...
This paper surveys recent work on learning in games and delineates the boundary between forms of lea...
AbstractA great deal of theoretical effort in multiagent learning involves either embracing or avoid...
Abstract. Learning in a multiagent environment is complicated by the fact that as other agents learn...
. Learning in a multiagent environment is complicated by the fact that as other agents learn, the en...
AbstractWe argue that learning equilibrium is an appropriate generalization to multi-agent systems o...
The goal of a self-interested agent within a multi-agent system is to maximize its utility over time...
AbstractThis paper surveys recent work on learning in games and delineates the boundary between form...
We argue that learning equilibrium is an appropriate generalization to multi-agent systems of the co...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
We propose a new classification for multi-agent learning algorithms, with each league of players cha...
Learning in the real world occurs when an agent, which perceives its current state and takes actions...
Multi-agent learning is a growing area of research. An important topic is to formulate how an agent ...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
The theory of learning in games studies how, which and what kind of equilibria might arise as a cons...
We present new Multiagent learning (MAL) algorithms with the general philosophy of policy convergenc...
This paper surveys recent work on learning in games and delineates the boundary between forms of lea...
AbstractA great deal of theoretical effort in multiagent learning involves either embracing or avoid...
Abstract. Learning in a multiagent environment is complicated by the fact that as other agents learn...
. Learning in a multiagent environment is complicated by the fact that as other agents learn, the en...
AbstractWe argue that learning equilibrium is an appropriate generalization to multi-agent systems o...
The goal of a self-interested agent within a multi-agent system is to maximize its utility over time...
AbstractThis paper surveys recent work on learning in games and delineates the boundary between form...
We argue that learning equilibrium is an appropriate generalization to multi-agent systems of the co...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
We propose a new classification for multi-agent learning algorithms, with each league of players cha...
Learning in the real world occurs when an agent, which perceives its current state and takes actions...
Multi-agent learning is a growing area of research. An important topic is to formulate how an agent ...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
The theory of learning in games studies how, which and what kind of equilibria might arise as a cons...
We present new Multiagent learning (MAL) algorithms with the general philosophy of policy convergenc...
This paper surveys recent work on learning in games and delineates the boundary between forms of lea...
AbstractA great deal of theoretical effort in multiagent learning involves either embracing or avoid...