Multirobot domains are a challenge for learning algorithms because they require robots to learn to cooperate to achieve a common goal. The challenge only becomes greater when robots must perform heterogeneous tasks to reach that goal. Multiagent HyperNEAT is a neuroevolutionary method (i.e. a method that evolves neural networks) that has proven successful in several cooperative multiagent domains by exploiting the concept of policy geometry, which means the policies of team members are learned as a function of how they relate to each other based on canonical starting positions. This paper extends the multiagent HyperNEAT algorithm by introducing situational policy geometry, which allows each agent to encode multiple policies that can be swi...
Mobile robots are already in use for mapping, agriculture, entertainment, and the delivery of goods ...
We investigate the problem of how to make a multi-robot system performing a cooperative task by indu...
This paper argues that multiagent learning is a potential killer application for generative and de...
Multirobot domains are a challenge for learning algorithms because they require robots to learn to c...
Multiagent systems present many challenging, real-world problems to artificial intelligence. Because...
Designing a system of multiple, heterogeneous agents that cooperate to achieve a common goal is a di...
A major challenge for traditional approaches to multiagent learning is to train teams that easily sc...
Artificial intelligence algorithms enable autonomous agents to perform sophisticated tasks with grea...
We present an approach that uses Q-learning on individual robotic agents, for coordinating a mission...
Abstract — Learning policies that generalize across multiple tasks is an important and challenging r...
Abstract—This paper presents a framework, called the knowl-edge co-creation framework (KCF), for het...
Policy gradient algorithms have shown consider-able recent success in solving high-dimensional seque...
Planning efficient and coordinated policies for a team of robots is a computationally demanding prob...
a multi agent approach and robotics behaviors can be classify as a type of distributed intelligence....
Abstract. Heterogeneous multi-robot teams are common solutions to complex tasks, especially those th...
Mobile robots are already in use for mapping, agriculture, entertainment, and the delivery of goods ...
We investigate the problem of how to make a multi-robot system performing a cooperative task by indu...
This paper argues that multiagent learning is a potential killer application for generative and de...
Multirobot domains are a challenge for learning algorithms because they require robots to learn to c...
Multiagent systems present many challenging, real-world problems to artificial intelligence. Because...
Designing a system of multiple, heterogeneous agents that cooperate to achieve a common goal is a di...
A major challenge for traditional approaches to multiagent learning is to train teams that easily sc...
Artificial intelligence algorithms enable autonomous agents to perform sophisticated tasks with grea...
We present an approach that uses Q-learning on individual robotic agents, for coordinating a mission...
Abstract — Learning policies that generalize across multiple tasks is an important and challenging r...
Abstract—This paper presents a framework, called the knowl-edge co-creation framework (KCF), for het...
Policy gradient algorithms have shown consider-able recent success in solving high-dimensional seque...
Planning efficient and coordinated policies for a team of robots is a computationally demanding prob...
a multi agent approach and robotics behaviors can be classify as a type of distributed intelligence....
Abstract. Heterogeneous multi-robot teams are common solutions to complex tasks, especially those th...
Mobile robots are already in use for mapping, agriculture, entertainment, and the delivery of goods ...
We investigate the problem of how to make a multi-robot system performing a cooperative task by indu...
This paper argues that multiagent learning is a potential killer application for generative and de...