DocumentCode
565667
Title
Learning by demonstration with critique from a human teacher
Author
Argall, Brenna ; Browning, Brett ; Veloso, Manuela
Author_Institution
Carnegie Mellon Univ., Pittsburgh, PA, USA
fYear
2007
fDate
9-11 March 2007
Firstpage
57
Lastpage
64
Abstract
Learning by demonstration can be a powerful and natural tool for developing robot control policies. That is, instead of tedious hand-coding, a robot may learn a control policy by interacting with a teacher. In this work we present an algorithm for learning by demonstration in which the teacher operates in two phases. The teacher first demonstrates the task to the learner. The teacher next critiques learner performance of the task. This critique is used by the learner to update its control policy. In our implementation we utilize a 1-Nearest Neighbor technique which incorporates both training dataset and teacher critique. Since the teacher critiques performance only, they do not need to guess at an effective critique for the underlying algorithm. We argue that this method is particularly well-suited to human teachers, who are generally better at assigning credit to performances than to algorithms. We have applied this algorithm to the simulated task of a robot intercepting a ball. Our results demonstrate improved performance with teacher critiquing, where performance is measured by both execution success and efficiency.
Keywords
human-robot interaction; learning by example; 1-nearest neighbor technique; execution efficiency; execution success; human teacher critique; learner performance; learning by demonstration; robot control policies; training dataset; Abstracts; Robots; Algorithms; Experimentation;
fLanguage
English
Publisher
ieee
Conference_Titel
Human-Robot Interaction (HRI), 2007 2nd ACM/IEEE International Conference on
Conference_Location
Arlington, VA
ISSN
2167-2121
Print_ISBN
978-1-59593-617-2
Type
conf
Filename
6251717
Link To Document