Sciweavers

AIIDE
2006

Incorporating Advice into Neuroevolution of Adaptive Agents

13 years 5 months ago
Incorporating Advice into Neuroevolution of Adaptive Agents
Neuroevolution is a promising learning method in tasks with extremely large state and action spaces and hidden states. Recent advances allow neuroevolution to take place in real time, making it possible to e.g. construct video games with adaptive agents. Often some of the desired behaviors for such agents are known, and it would make sense to prescribe them, rather than requiring evolution to discover them. This paper presents a technique for incorporating human-generated advice in real time into neuroevolution. The advice is given in a formal language and converted to a neural network structure through KBANN. The NEAT neuroevolution method then incorporates the structure into existing networks through evolution of network weights and topology. The method is evaluated in the NERO video game, where it makes learning faster even when the tasks change and novel ways of making use of the advice are required. Such ability to incorporate human knowledge into neuroevolution in real time may ...
Chern Han Yong, Kenneth O. Stanley, Risto Miikkula
Added 30 Oct 2010
Updated 30 Oct 2010
Type Conference
Year 2006
Where AIIDE
Authors Chern Han Yong, Kenneth O. Stanley, Risto Miikkulainen, Igor Karpov
Comments (0)