This paper presents the dynamics of multi-agent reinforcement learning in multiple state problems. We extend previous work that formally modelled the relation between reinforcement learning agents and replicator dynamics in stateless multi-agent games. More precisely, in this work we use a combination of replicator dynamics and switching dynamics to model multi-agent learning automata in multi-state games. This is the first time that the dynamics of problems with more than one state is considered with replicator equations. Previously, it was unclear how the replicator dynamics of stateless games had to be extended to account for multiple states. We use our model to visualize the basin of attraction of the learning agents and the boundaries ...
Abstract. Many real-world scenarios can be modelled as multi-agent systems, where multiple autonomou...
Dynamic noncooperative multiagent systems are systems where self-interested agents interact with eac...
Abstract. In this paper we compare state-of-the-art multi-agent rein-forcement learning algorithms i...
This paper presents the dynamics of multi-agent reinforcement learning in multiple state problems. W...
This paper extends the link between evolutionary game theory and multi-agent reinforcement learning ...
This paper extends the link between evolutionary game theory and multi-agent reinforcement learning ...
This paper extends the link between evolutionary game theory and multi-agent reinforcement learning ...
This paper extends the link between evolutionary game theory and multi-agent reinforcement learning ...
This paper introduces a new model, i.e. state-coupled replicator dynamics, expanding the link betwee...
This paper introduces a new model, i.e. state-coupled replicator dynamics, expanding the link betwee...
This paper introduces a new model, i.e. state-coupled replicator dynamics, expanding the link betwee...
This paper introduces a new model, i.e. state-coupled replicator dynamics, expanding the link betwee...
Abstract. Today’s society is largely connected and many real life appli-cations lend themselves to b...
In this paper we compare state-of-the-art multi-agent reinforcement learning algorithms in a wide va...
This paper introduces a new multi-agent learning algorithm for stochastic games based on replicator ...
Abstract. Many real-world scenarios can be modelled as multi-agent systems, where multiple autonomou...
Dynamic noncooperative multiagent systems are systems where self-interested agents interact with eac...
Abstract. In this paper we compare state-of-the-art multi-agent rein-forcement learning algorithms i...
This paper presents the dynamics of multi-agent reinforcement learning in multiple state problems. W...
This paper extends the link between evolutionary game theory and multi-agent reinforcement learning ...
This paper extends the link between evolutionary game theory and multi-agent reinforcement learning ...
This paper extends the link between evolutionary game theory and multi-agent reinforcement learning ...
This paper extends the link between evolutionary game theory and multi-agent reinforcement learning ...
This paper introduces a new model, i.e. state-coupled replicator dynamics, expanding the link betwee...
This paper introduces a new model, i.e. state-coupled replicator dynamics, expanding the link betwee...
This paper introduces a new model, i.e. state-coupled replicator dynamics, expanding the link betwee...
This paper introduces a new model, i.e. state-coupled replicator dynamics, expanding the link betwee...
Abstract. Today’s society is largely connected and many real life appli-cations lend themselves to b...
In this paper we compare state-of-the-art multi-agent reinforcement learning algorithms in a wide va...
This paper introduces a new multi-agent learning algorithm for stochastic games based on replicator ...
Abstract. Many real-world scenarios can be modelled as multi-agent systems, where multiple autonomou...
Dynamic noncooperative multiagent systems are systems where self-interested agents interact with eac...
Abstract. In this paper we compare state-of-the-art multi-agent rein-forcement learning algorithms i...