首页 /研究 /Evolution of meta-parameters in reinforcement learning algorithm
LEARNING

Evolution of meta-parameters in reinforcement learning algorithm

Anders Eriksson, Genci Capi, Kenji Doya

发表年份
2004
引用次数
27

摘要

A crucial issue in reinforcement learning applications is how to set meta-parameters, such as the learning rate and "temperature" for exploration, to match the demands of the task and the environment. In this paper, we propose a method to adjust meta-parameters of reinforcement learning by real-number genetic algorithm. It was shown in simulations of foraging tasks that appropriate settings of meta-parameters, which are strongly dependent on each other, can be found by evolution. Furthermore, we verified in hardware experiments using cyber rodent (CR) robots that the meta-parameters evolved in simulation are helpful for learning in real hardware.

关键词

Reinforcement learningComputer scienceTask (project management)Meta learning (computer science)Set (abstract data type)RobotForagingArtificial intelligenceGenetic algorithmLearning classifier system

相关论文

查看 LEARNING 分类全部论文