Melioration learning is an empirically well-grounded model of reinforcement learning. By means of computer simulations, this paper derives predictions for several repeatedly played two-person games from this model. The results indicate a likely convergence to a pure Nash equilibrium of the game. If no pure equilibrium exists, the relative frequencies of choice may approach the predictions of the mixed Nash equilibrium. Yet in some games, no stable state is reached
We consider repeated play of so-called potential games. Numerous modes of play are shown to yield Na...
This paper studies the analytical properties of the reinforcement learning model proposed in Erev an...
Suppose two players repeatedly meet each other to play a game where: 1. each uses a learning rule wi...
Melioration learning is an empirically well-grounded model of reinforcement learning. By means of co...
Melioration learning is an empirically well-grounded model of reinforcement learning. By means of co...
The authors examine learning in all experiments they could locate involving one hundred periods or m...
Many approaches to learning in games fall into one of two broad classes: reinforcement and belief le...
Do boundedly rational players learn to choose equilibrium strategies as they play a game repeatedly?...
AbstractThis paper surveys recent work on learning in games and delineates the boundary between form...
This paper presents a new, probabilistic model of learning in games which investigates the often sta...
The aim of my Ph.D. thesis is to advance understanding of human choice behavior in repeated strategi...
This dissertation presents a platform for running experiments on multiagent reinforcement learning ...
This thesis advances game theory by formally analysing the implications of replacing some of its mos...
The theory of learning in games studies how, which and what kind of equilibria might arise as a cons...
We report experiments in which humans repeatedly play one of two games against a computer program th...
We consider repeated play of so-called potential games. Numerous modes of play are shown to yield Na...
This paper studies the analytical properties of the reinforcement learning model proposed in Erev an...
Suppose two players repeatedly meet each other to play a game where: 1. each uses a learning rule wi...
Melioration learning is an empirically well-grounded model of reinforcement learning. By means of co...
Melioration learning is an empirically well-grounded model of reinforcement learning. By means of co...
The authors examine learning in all experiments they could locate involving one hundred periods or m...
Many approaches to learning in games fall into one of two broad classes: reinforcement and belief le...
Do boundedly rational players learn to choose equilibrium strategies as they play a game repeatedly?...
AbstractThis paper surveys recent work on learning in games and delineates the boundary between form...
This paper presents a new, probabilistic model of learning in games which investigates the often sta...
The aim of my Ph.D. thesis is to advance understanding of human choice behavior in repeated strategi...
This dissertation presents a platform for running experiments on multiagent reinforcement learning ...
This thesis advances game theory by formally analysing the implications of replacing some of its mos...
The theory of learning in games studies how, which and what kind of equilibria might arise as a cons...
We report experiments in which humans repeatedly play one of two games against a computer program th...
We consider repeated play of so-called potential games. Numerous modes of play are shown to yield Na...
This paper studies the analytical properties of the reinforcement learning model proposed in Erev an...
Suppose two players repeatedly meet each other to play a game where: 1. each uses a learning rule wi...