<?xml version="1.0" encoding="UTF-8"?>
<XML><RECORDS>
<RECORD>
	<REFERENCE_TYPE>3</REFERENCE_TYPE>
	<AUTHORS>
		<AUTHOR>Reinaldo Bianchi</AUTHOR>
		<AUTHOR>Raquel Ros</AUTHOR>
		<AUTHOR>Ramon LÃ³pez de MÃ¡ntaras</AUTHOR>
	</AUTHORS>
	<YEAR>2009</YEAR>
	<TITLE>Improving Reinforcement Learning by using Case-Based Heuristics</TITLE>
	<SECONDARY_TITLE>ICCBR'09: 8th International Conference on Case-Based Reasoning</SECONDARY_TITLE>
	<PUBLISHER>Lecture Notes in Artificial Intelligence, Springer</PUBLISHER>
	<VOLUME>5650</VOLUME>
	<PAGES>75-89</PAGES>
	<TERTIARY_TITLE>Lecture Notes in Artificial Intelligence </TERTIARY_TITLE>
	<ABSTRACT>This work presents a new approach that allows the use of cases in
a case base as heuristics to speed up Reinforcement Learning algorithms, combining
Case Based Reasoning (CBR) and Reinforcement Learning (RL) techniques.
This approach, called Case Based Heuristically Accelerated Reinforcement
Learning (CB-HARL), builds upon an emerging technique, the Heuristic
Accelerated Reinforcement Learning (HARL), in which RL methods are accelerated
by making use of heuristic information. CB-HARL is a subset of RL that
makes use of a heuristic function derived from a case base, in a Case Based Reasoning
manner. An algorithm that incorporates CBR techniques into the Heuristically
Accelerated Q&acirc;€“Learning is also proposed. Empirical evaluations were conducted
in a simulator for the RoboCup Four-Legged Soccer Competition, and
results obtained shows that using CB-HARL, the agents learn faster than using
either RL or HARL methods.</ABSTRACT>
</RECORD>
</RECORDS></XML>