Přístupnostní navigace
E-přihláška
Vyhledávání Vyhledat Zavřít
Detail publikace
VĚCHET, S., MIČEK, P., KREJSA, J.
Originální název
Using Q-Learning with LWR in continuous space
Typ
článek ve sborníku ve WoS nebo Scopus
Jazyk
angličtina
Originální abstrakt
Locally Weighted Learning (LWR) is a class of approximations, based on a local model. In this paper we demonstrate using LWR together with Q-learning for control tasks. Q-learning is the most effective and popular algorithm which belongs to the Reinforcement Learning algorithms group. This algorithm works with rewards and penalties. The most common representation of Q-function is the table. The table must be replaced by suitable approximator if use of continuous states is required. LWR is one of possible approximators. To get the first impression on application of LWR together with modified Q-learning for the control task a simple model of inverted pendulum was created and proposed method was applied on this model.
Klíčová slova
Q-Learning, LWR, Continuous Space
Autoři
Rok RIV
2003
Vydáno
18. 6. 2003
Nakladatel
Alexander Dubček University of Trenčí, Faculty of Mechatronics
Místo
Trenčín
ISBN
80-88914-92-2
Kniha
Proceedings of 6th international symposium on Mechatronics
Strany od
58
Strany do
61
Strany počet
4
BibTex
@inproceedings{BUT8367, author="Stanislav {Věchet} and Pavel {Miček} and Jiří {Krejsa}", title="Using Q-Learning with LWR in continuous space", booktitle="Proceedings of 6th international symposium on Mechatronics", year="2003", pages="4", publisher="Alexander Dubček University of Trenčí, Faculty of Mechatronics", address="Trenčín", isbn="80-88914-92-2" }