Imagine computer programs (agents) that learn to coordinate or to compete. This study investigates how their learning processes influence each other. Such adaptive agents already take vital roles behind the scenes of our society, e.g., high frequency automated traders participate in financial trading and create more volume than human trading in some US markets. However, many learning algorithms only have proven performance guarantees if they act alone - as soon as a second agent influences the outcomes most guarantees are invalid. This dissertation extends guarantees to strategic interactions of several agents and examines how closely algorithms approximate optimal behavior. This research was funded by a TopTalent 2008 grant of NWO
This paper presents the dynamics of multiple learning agents from an evolutionary game theoretic per...
Algorithmic game theory attempts to mathematically capture behavior in strategic situations, in whic...
In this paper we revise reinforcement learning and adaptiveness in multi-agent systems from an evolu...
Imagine computer programs (agents) that learn to coordinate or to compete. This study investigates h...
Multi-agent learning plays an increasingly important role in solving complex dynamic problems in to-...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
Machine learning and artificial intelligence has been a hot topic the last few years, thanks to impr...
Our joint paper, with Romuald Elie and Carl Remlinger entitled Reinforcement Learning in Economics a...
We develop a theoretical model to study strategic interactions between adaptive learning algorithms....
We conduct experiments in which humans repeatedly play one of two games against a computer decision ...
Each chapter of this dissertation focuses on a different aspect of strategic behavior. The first cha...
Pricing decisions are increasingly made by algorithms. To assess if reinforcement learning algorithm...
A learning rule is adaptive if it is simple to compute, requires little information about the action...
With Romuald Elie and Carl Remlinger we recently uploaded on ArXiv a paper on Reinforcement Learning...
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...
Algorithmic game theory attempts to mathematically capture behavior in strategic situations, in whic...
In this paper we revise reinforcement learning and adaptiveness in multi-agent systems from an evolu...
Imagine computer programs (agents) that learn to coordinate or to compete. This study investigates h...
Multi-agent learning plays an increasingly important role in solving complex dynamic problems in to-...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
Machine learning and artificial intelligence has been a hot topic the last few years, thanks to impr...
Our joint paper, with Romuald Elie and Carl Remlinger entitled Reinforcement Learning in Economics a...
We develop a theoretical model to study strategic interactions between adaptive learning algorithms....
We conduct experiments in which humans repeatedly play one of two games against a computer decision ...
Each chapter of this dissertation focuses on a different aspect of strategic behavior. The first cha...
Pricing decisions are increasingly made by algorithms. To assess if reinforcement learning algorithm...
A learning rule is adaptive if it is simple to compute, requires little information about the action...
With Romuald Elie and Carl Remlinger we recently uploaded on ArXiv a paper on Reinforcement Learning...
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...
Algorithmic game theory attempts to mathematically capture behavior in strategic situations, in whic...
In this paper we revise reinforcement learning and adaptiveness in multi-agent systems from an evolu...