Locally Weighted Learning For Control - Robotics Institute Carnegie Mellon University

Locally Weighted Learning For Control

Andrew Moore, C. G. Atkeson, and S. A. Schaal
Journal Article, Artificial Intelligence Review, Vol. 11, No. 1, pp. 75 - 113, February, 1997

Abstract

Lazy learning methods provide useful representations and training algorithms for learning about complex phenomena during autonomous adaptive control of complex systems. This paper surveys ways in which locally weighted learning, a type of lazy learning, has been applied by us to control tasks. We explain various forms that control tasks can take, and how this affects the choice of learning paradigm. The discussion section explores the interesting impact that explicitly remembering all previous experiences has on the problem of learning to control.

BibTeX

@article{Moore-1997-16461,
author = {Andrew Moore and C. G. Atkeson and S. A. Schaal},
title = {Locally Weighted Learning For Control},
journal = {Artificial Intelligence Review},
year = {1997},
month = {February},
volume = {11},
number = {1},
pages = {75 - 113},
}