Title :
Auto-supervised learning in the Bayesian Programming Framework
Author :
Dangauthier, Pierre ; Bessieere, P. ; Spalanzani, Anne
Author_Institution :
E-Motion INRIA / GRAVIR - CNRS 655 Avenue de l´´Europe, Montbonnot 38334 Saint Ismier cedex - France; pierre.dangauthier@imag.fr
Abstract :
Domestic and real world robotics requires continuous learning of new skills and behaviors to interact with humans. Auto-supervised learning, a compromise between supervised and completely unsupervised learning, consist in relying on previous knowledge to acquire new skills. We propose here to realize auto-supervised learning by exploiting statistical regularities in the sensorimotor space of a robot. In our context, it corresponds to achieve feature selection in a Bayesian programming framework. We compare several feature selection algorithms and validate them on a real robotic experiment.
Keywords :
Auto-supervised learning; Bayesian Programming; Feature Selection; Genetic Algorithms; Uncertain Environment; Actuators; Bayesian methods; Biosensors; Cognition; Human robot interaction; Laser feedback; Orbital robotics; Robot programming; Robot sensing systems; Robotics and automation; Auto-supervised learning; Bayesian Programming; Feature Selection; Genetic Algorithms; Uncertain Environment;
Conference_Titel :
Robotics and Automation, 2005. ICRA 2005. Proceedings of the 2005 IEEE International Conference on
Print_ISBN :
0-7803-8914-X
DOI :
10.1109/ROBOT.2005.1570581