We use simulated soccer to study multiagent learning. Each team's players (agents) share action set and policy but may behave differently due to positiondependent inputs. All agents making up a team are rewarded or punished collectively in case of goals. We conduct simulations with varying team sizes, and compare two learning algorithms: TD-Q learning with linear neural networks (TD-Q) and Probabilistic Incremental Program Evolution (PIPE). TD-Q is based on evaluation functions (EFs) mapping input/action pairs to expected reward, while PIPE searches policy space directly. PIPE uses adaptive "probabilistic prototype trees" to synthesize programs that calculate action probabilities from current inputs. Our results show that TD-...
In the past few years, Multiagent Systems (MAS) has emerged as an active subfield of Artificial Inte...
We consider the problem of incremental transfer of behaviors in a multi-agent learning test bed (kee...
Abstract. Being of a high complexity, most multi-agent systems are difficult to deal with by a hand-...
We use simulated soccer to study multiagent learning. Each team's players (agents) share action...
Abstract. We use simulated soccer to study multiagent learning. Each team's players (agents) sh...
We use simulated soccer to study multiagent learning. Each team's players (agents) share action se...
We study multiagent learning in a simulated soccer scenario. Players from the same team share a comm...
We study multiagent learning in a simulated soccer scenario. Players from the same team share a co...
As an example of multi-agent learning in soccer games of the RoboCup 2D Soccer Simulation League, we...
Abstract. We use simulated soccer to study multi-agent learning. Each team member tries to learn fro...
. We use reinforcement learning (RL) to compute strategies for multiagent soccer teams. RL may profi...
Designing soccer agents operating on the Soccer Server has became a standard problem in the multiage...
Multiagent systems present many challenging, real-world problems to artificial intelligence. Because...
On-line learning methods have been applied successfully in multi-agent systems to achieve coordinati...
Abstract. We use reinforcement learning (RL) to compute strategies for multiagent soccer teams. RL m...
In the past few years, Multiagent Systems (MAS) has emerged as an active subfield of Artificial Inte...
We consider the problem of incremental transfer of behaviors in a multi-agent learning test bed (kee...
Abstract. Being of a high complexity, most multi-agent systems are difficult to deal with by a hand-...
We use simulated soccer to study multiagent learning. Each team's players (agents) share action...
Abstract. We use simulated soccer to study multiagent learning. Each team's players (agents) sh...
We use simulated soccer to study multiagent learning. Each team's players (agents) share action se...
We study multiagent learning in a simulated soccer scenario. Players from the same team share a comm...
We study multiagent learning in a simulated soccer scenario. Players from the same team share a co...
As an example of multi-agent learning in soccer games of the RoboCup 2D Soccer Simulation League, we...
Abstract. We use simulated soccer to study multi-agent learning. Each team member tries to learn fro...
. We use reinforcement learning (RL) to compute strategies for multiagent soccer teams. RL may profi...
Designing soccer agents operating on the Soccer Server has became a standard problem in the multiage...
Multiagent systems present many challenging, real-world problems to artificial intelligence. Because...
On-line learning methods have been applied successfully in multi-agent systems to achieve coordinati...
Abstract. We use reinforcement learning (RL) to compute strategies for multiagent soccer teams. RL m...
In the past few years, Multiagent Systems (MAS) has emerged as an active subfield of Artificial Inte...
We consider the problem of incremental transfer of behaviors in a multi-agent learning test bed (kee...
Abstract. Being of a high complexity, most multi-agent systems are difficult to deal with by a hand-...