Reinforcement learning, in a nutshell, is a form of learning that enables the robot to construct a control law by a system of feedback signals that reinforce «electrical path ways» that produce correct response, and conversely wipe-out connections that produce errors. Unfortunately, without biasing, it is a weak learning that presents unreasonable difficulty, especially when it is applied to real robots. The subject of this thesis is to study, for a particular class of problems, the effects of different form of biases on the speed of learning as well as on the quality of final learned policy, and to realize this learning paradigm on a physical robot by appropriately biasing the robot with domain knowledge that determines how much the robot knows about the different parts of its world.
Reihe
Thesis
Sprache
Verlagsort
Frankfurt a.M.
Deutschland
Zielgruppe
Editions-Typ
Illustrationen
Maße
Höhe: 21 cm
Breite: 14.8 cm
Gewicht
ISBN-13
978-3-631-35960-0 (9783631359600)
Schweitzer Klassifikation
The Author: Getachew Hailu was born in 1966 in Selalie. He received his M. Sc and B. Sc degrees in Electrical Engineering both from the Addis Ababa University (AAU). From 1990 to 1993 he was a Junior Associate at the Microprocessor Laboratory of the International Center for Theoretical Physics (ICTP), Trieste, Italy. From 1994 to 1995, he was a visiting researcher at Robotics Laboratory of the Toaki University, Kanagawa, Japan. From 1995 to 1999, he persued his Ph.D study in Computer Science at the University of Kiel, Germany.
Contents: Kalman Filter - Reinforcement Learning - Bias - Belief Matrix.