We revisit the El Farol bar problem developed by Brian W. Arthur (1994) to investigate how one might best model bounded rationality in economics. We begin by modelling the El Farol bar problem as a market entry game and describing its Nash equilibria. Then, assuming agents are boundedly rational in accordance with a reinforcement learning model, we analyse long-run behaviour in the repeated game. We then state our main result. In a single population of individuals playing the El Farol game, learning theory predicts that the population is eventually subdivided into two distinct groups: those who invariably go to the bar and those who almost never do. In doing so we demonstrate that learning theory predicts sorting in the El Farol bar problem...
Melioration learning is an empirically well-grounded model of reinforcement learning. By means of co...
In this paper we address the topic of guessing games. By developing a generalised theory of naïveté,...
Recent models of learning in games have attempted to produce individual-level learning algorithms th...
This thesis is composed of three chapters, which can be read independentlyIn the first chapter, we r...
The El Farol Bar problem proposed by Arthur in [1] is a study of economic system. Though Arthur's ma...
We mathematize El Farol bar problem and transform it into a workable model. We find general conditio...
Do boundedly rational players learn to choose equilibrium strategies as they play a game repeatedly?...
This paper examines the performance of simple learning rules in a complex adaptive system based on a...
Algorithmic game theory attempts to mathematically capture behavior in strategic situations, in whic...
This dissertation contains four essays about evolutionary learning dynamics and the quantal response...
In repeated games with Nash equilibria in mixed strategies, players optimize by playing randomly. Pl...
This paper studies the analytical properties of the reinforcement learning model proposed in Erev an...
The paper studies infinite repetition of finite strategic form games. Players use a learning behavio...
We consider repeated play of so-called potential games. Numerous modes of play are shown to yield Na...
This paper investigates learning in the Santa Fe (El Farol) bar problem (sfbp). It is argued that ...
Melioration learning is an empirically well-grounded model of reinforcement learning. By means of co...
In this paper we address the topic of guessing games. By developing a generalised theory of naïveté,...
Recent models of learning in games have attempted to produce individual-level learning algorithms th...
This thesis is composed of three chapters, which can be read independentlyIn the first chapter, we r...
The El Farol Bar problem proposed by Arthur in [1] is a study of economic system. Though Arthur's ma...
We mathematize El Farol bar problem and transform it into a workable model. We find general conditio...
Do boundedly rational players learn to choose equilibrium strategies as they play a game repeatedly?...
This paper examines the performance of simple learning rules in a complex adaptive system based on a...
Algorithmic game theory attempts to mathematically capture behavior in strategic situations, in whic...
This dissertation contains four essays about evolutionary learning dynamics and the quantal response...
In repeated games with Nash equilibria in mixed strategies, players optimize by playing randomly. Pl...
This paper studies the analytical properties of the reinforcement learning model proposed in Erev an...
The paper studies infinite repetition of finite strategic form games. Players use a learning behavio...
We consider repeated play of so-called potential games. Numerous modes of play are shown to yield Na...
This paper investigates learning in the Santa Fe (El Farol) bar problem (sfbp). It is argued that ...
Melioration learning is an empirically well-grounded model of reinforcement learning. By means of co...
In this paper we address the topic of guessing games. By developing a generalised theory of naïveté,...
Recent models of learning in games have attempted to produce individual-level learning algorithms th...