Abstract. Being of a high complexity, most multi-agent systems are difficult to deal with by a hand-coded approach to decision making. In such complicated environments in which decision making processes should be controlled from both the individuals points ' of view and the whole team, the common approach to the subject is the Reinforcement Learning (RL) method which is mainly based on learning the optimal policy through mapping this task to an episodic reinforcement learning framework. Reinforcement learning is the problem of generating optimal behavior in a sequential decision making environment given the opportunity of interacting with it. Since the Robocop domain is a multi-agent dynamic environment, with notable features making it...
Abstract. Collecting and maintaining accurate world knowledge in a dynamic, complex, adversarial, an...
The Robosoccer simulator is a challenging environment for artificial intelligence, where a human has...
This paper proposes a method for agent behavior clas-sification which estimates the relations betwee...
Summary Robotic soccer requires the ability of individually acting agents to cooperate. The simulati...
Abstract — RoboCup soccer simulation features the challenges of a fully distributed multi-agent doma...
Our long-term goal is to build teams of agents where the decision making is based completely on Rei...
Abstract. The main interest behind the Brainstormers ’ effort in the robocup soccer domain is to dev...
This thesis aims to apply the reinforcement learning into soccer robot and show the great power of r...
The RoboCup Soccer Domain, which was proposed in order to provide a new long-term challenge for Arti...
Abstract. In this paper, we apply Reinforcement Learning (RL) to a real-world task. While complex pr...
Abstract. We present half field offense, a novel subtask of RoboCup simulated soccer, and pose it as...
While autonomous mobile robots used to be built for domain specific tasks in factories or similar sa...
The RoboCup Soccer Simulator is a multi-agent soccer simulator used in competitions to simulate socc...
"Robosoccer is a popular test bed for AI programs around the world in which AIBO entertainments robo...
The dynamic cooperation model of multi-Agent is formed by combining reinforcement learning with BDI ...
Abstract. Collecting and maintaining accurate world knowledge in a dynamic, complex, adversarial, an...
The Robosoccer simulator is a challenging environment for artificial intelligence, where a human has...
This paper proposes a method for agent behavior clas-sification which estimates the relations betwee...
Summary Robotic soccer requires the ability of individually acting agents to cooperate. The simulati...
Abstract — RoboCup soccer simulation features the challenges of a fully distributed multi-agent doma...
Our long-term goal is to build teams of agents where the decision making is based completely on Rei...
Abstract. The main interest behind the Brainstormers ’ effort in the robocup soccer domain is to dev...
This thesis aims to apply the reinforcement learning into soccer robot and show the great power of r...
The RoboCup Soccer Domain, which was proposed in order to provide a new long-term challenge for Arti...
Abstract. In this paper, we apply Reinforcement Learning (RL) to a real-world task. While complex pr...
Abstract. We present half field offense, a novel subtask of RoboCup simulated soccer, and pose it as...
While autonomous mobile robots used to be built for domain specific tasks in factories or similar sa...
The RoboCup Soccer Simulator is a multi-agent soccer simulator used in competitions to simulate socc...
"Robosoccer is a popular test bed for AI programs around the world in which AIBO entertainments robo...
The dynamic cooperation model of multi-Agent is formed by combining reinforcement learning with BDI ...
Abstract. Collecting and maintaining accurate world knowledge in a dynamic, complex, adversarial, an...
The Robosoccer simulator is a challenging environment for artificial intelligence, where a human has...
This paper proposes a method for agent behavior clas-sification which estimates the relations betwee...