A key objective of transfer learning is to improve and speedup learning on a target task after training on a different, but related, source task. This study presents a neuro-evolution method that transfers evolved policies within multi-agent tasks of varying degrees of complexity. The method incorporates behavioral diversity (novelty) search as a means to boost the task performance of transferred policies (multi-agent behaviors). Results indicate that transferred evolved multi-agent behaviors are significantly improved in more complex tasks when adapted using behavioral diversity. Comparatively, behaviors that do not use behavioral diversity to further adapt transferred behaviors, perform relatively poorly in terms of adaptation times and q...
We study multiagent learning in a simulated soccer scenario. Players from the same team share a co...
Artificial intelligence algorithms enable autonomous agents to perform sophisticated tasks with grea...
In dynamic motion generation tasks, including contact and collisions, small changes in policy parame...
A key objective of transfer learning is to improve and speedup learning on a target task after train...
An objective of transfer learning is to improve and speedup learning on target tasks after training ...
This study investigates the impact of genotypic and behavioral diversity maintenance methods on cont...
The design of effective, robust and autonomous controllers for multi-agent and multi-robot systems i...
This study investigates multi-agent policy transfer coupled with behavior adaptation by objective an...
This study evaluates various evolutionary search methods to direct neural controller evolution in co...
This article embarks a study on multiagent transfer learning (TL) for addressing the specific challe...
Multi-agent systems (MAS) are computerized systems composing of multiple interacting and autonomous ...
Neural networks have been widely used in agent learning architectures; however, learnings for one ta...
Reinforcement learning algorithms are very effective at learning policies (mappings from states to a...
Multirobot domains are a challenge for learning algorithms because they require robots to learn to c...
This paper describes research investigating behavioral specialization in learning robot teams. Each ...
We study multiagent learning in a simulated soccer scenario. Players from the same team share a co...
Artificial intelligence algorithms enable autonomous agents to perform sophisticated tasks with grea...
In dynamic motion generation tasks, including contact and collisions, small changes in policy parame...
A key objective of transfer learning is to improve and speedup learning on a target task after train...
An objective of transfer learning is to improve and speedup learning on target tasks after training ...
This study investigates the impact of genotypic and behavioral diversity maintenance methods on cont...
The design of effective, robust and autonomous controllers for multi-agent and multi-robot systems i...
This study investigates multi-agent policy transfer coupled with behavior adaptation by objective an...
This study evaluates various evolutionary search methods to direct neural controller evolution in co...
This article embarks a study on multiagent transfer learning (TL) for addressing the specific challe...
Multi-agent systems (MAS) are computerized systems composing of multiple interacting and autonomous ...
Neural networks have been widely used in agent learning architectures; however, learnings for one ta...
Reinforcement learning algorithms are very effective at learning policies (mappings from states to a...
Multirobot domains are a challenge for learning algorithms because they require robots to learn to c...
This paper describes research investigating behavioral specialization in learning robot teams. Each ...
We study multiagent learning in a simulated soccer scenario. Players from the same team share a co...
Artificial intelligence algorithms enable autonomous agents to perform sophisticated tasks with grea...
In dynamic motion generation tasks, including contact and collisions, small changes in policy parame...