Home /Research /Interactive Reinforcement Learning from Imperfect Teachers
LEARNING

Interactive Reinforcement Learning from Imperfect Teachers

Taylor A. Kessler Faulkner, Andrea L. Thomaz

Year
2021
Citations
9
Access
Open access

Abstract

Robots can use information from people to improve learning speed or quality. However, people can have short attention spans and misunderstand tasks. Our work addresses these issues with algorithms for learning from inattentive teachers that take advantage of feedback when people are present, and an algorithm for learning from inaccurate teachers that estimates which state-action pairs receive incorrect feedback. These advances will enhance robots' ability to take advantage of imperfect feedback from human teachers.

Keywords

ImperfectComputer scienceReinforcement learningPerfect informationRobotQuality (philosophy)Action (physics)Artificial intelligenceHuman–computer interactionMathematics

Related papers

Browse all LEARNING papers