This paper examines the performance of simple learning rules in a complex adaptive system based on a coordination problem modeled on the El Farol problem. The key features of the El Farol problem are that it typically involves a medium number of agents and that agents' pay-off functions have a discontinuous response to increased congestion. First we consider a single adaptive agent facing a stationary environment. We demonstrate that the simple learning rules proposed by Roth and Er'ev can be extremely sensitive to small changes in the initial conditions and that events early in a simulation can affect the performance of the rule over a relatively long time horizon. In contrast, a reinforcement learning rule based on standard practice in th...
This paper investigates a relatively new direction in Mul-tiagent Reinforcement Learning. Most multi...
A key aspect of artificial intelligence is the ability to learn from experience. If examples of corr...
We investigate learning in a setting where each period a population has to choose between two action...
Learning to act optimally in the complex world has long been a major goal in artificial intelligence...
We revisit the El Farol bar problem developed by Brian W. Arthur (1994) to investigate how one might...
Imagine computer programs (agents) that learn to coordinate or to compete. This study investigates h...
This project addresses a fundamental problem faced by many reinforcement learning agents. Commonly u...
Recent research has turned to Reinforcement Learning (RL) to solve challenging decision problems, as...
Reinforcement learning is a promising technique for learning agents to adapt their own strategies in...
The present study focuses on a class of games with reinforcement-learning agents that adaptively cho...
Reinforcement learning is a family of machine learning algorithms, in which the system learns to mak...
A learning rule is adaptive if it is simple to compute, requires little information about the action...
Machine learning and artificial intelligence has been a hot topic the last few years, thanks to impr...
10 pagesInternational audienceWe consider an agent that must choose repeatedly among several actions...
In the last few years, Reinforcement Learning (RL), also called adaptive (or approximate) dynamic pr...
This paper investigates a relatively new direction in Mul-tiagent Reinforcement Learning. Most multi...
A key aspect of artificial intelligence is the ability to learn from experience. If examples of corr...
We investigate learning in a setting where each period a population has to choose between two action...
Learning to act optimally in the complex world has long been a major goal in artificial intelligence...
We revisit the El Farol bar problem developed by Brian W. Arthur (1994) to investigate how one might...
Imagine computer programs (agents) that learn to coordinate or to compete. This study investigates h...
This project addresses a fundamental problem faced by many reinforcement learning agents. Commonly u...
Recent research has turned to Reinforcement Learning (RL) to solve challenging decision problems, as...
Reinforcement learning is a promising technique for learning agents to adapt their own strategies in...
The present study focuses on a class of games with reinforcement-learning agents that adaptively cho...
Reinforcement learning is a family of machine learning algorithms, in which the system learns to mak...
A learning rule is adaptive if it is simple to compute, requires little information about the action...
Machine learning and artificial intelligence has been a hot topic the last few years, thanks to impr...
10 pagesInternational audienceWe consider an agent that must choose repeatedly among several actions...
In the last few years, Reinforcement Learning (RL), also called adaptive (or approximate) dynamic pr...
This paper investigates a relatively new direction in Mul-tiagent Reinforcement Learning. Most multi...
A key aspect of artificial intelligence is the ability to learn from experience. If examples of corr...
We investigate learning in a setting where each period a population has to choose between two action...