Teaching agents with human feedback: a demonstration of the tamer framework

作者: W Bradley Knox , Peter Stone , Cynthia Breazeal

DOI:

关键词:

摘要: Incorporating human interaction into agent learning yields two crucial benefits. First, human knowledge can greatly improve the speed and final result of learning compared to pure trial-and-error approaches like reinforcement learning. And second, human users are empowered to designate "correct" behavior. In this abstract, we present research on a system for learning from human interaction - the TAMER framework - then point to extensions to TAMER, and finally describe a demonstration of these systems.

参考文章(0)