Home /Research /Novelty and Reinforcement Learning in the Value System of Developmental Robots
LEARNING

Novelty and Reinforcement Learning in the Value System of Developmental Robots

Xiao Huang, John Weng

Year
2002
Citations
119
Access
Open access

Abstract

The value system of a developmental robot signals the occurrence of salient sensory inputs, modulates the mapping from sensory inputs to action outputs, and evaluates candidate actions. In the work reported here, a low level value system is modeled and implemented. It simulates the non-associative animal learning mechanism known as habituation effect. Reinforcement learning is also integrated with novelty. Experimental results show that the proposed value system works as designed in a study of robot viewing angle selection.

Keywords

NoveltyReinforcement learningHabituationArtificial intelligenceAction selectionSensory systemComputer scienceAssociative learningValue (mathematics)Reinforcement

Related papers

Browse all LEARNING papers