Comparing extended classifier system and genetic programming for financial forecasting: an empirical study
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{journals/soco/ChenCCHH07,
-
author = "Mu-Yen Chen and Kuang-Ku Chen and Heien-Kun Chiang and
Hwa-Shan Huang and Mu-Jung Huang",
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title = "Comparing extended classifier system and genetic
programming for financial forecasting: an empirical
study",
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journal = "Soft Computing",
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year = "2007",
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volume = "11",
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number = "12",
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pages = "1173--1183",
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month = oct,
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keywords = "genetic algorithms, genetic programming, Learning
classifier system, Extended classifier system, Machine
learning",
-
ISSN = "1432-7643",
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DOI = "doi:10.1007/s00500-007-0161-3",
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abstract = "As a broad subfield of artificial intelligence,
machine learning is concerned with the development of
algorithms and techniques that allow computers to
learn. These methods such as fuzzy logic, neural
networks, support vector machines, decision trees and
Bayesian learning have been applied to learn meaningful
rules; however, the only drawback of these methods is
that it often gets trapped into a local optimal. In
contrast with machine learning methods, a genetic
algorithm (GA) is guaranteeing for acquiring better
results based on its natural evolution and global
searching. GA has given rise to two new fields of
research where global optimization is of crucial
importance: genetic based machine learning (GBML) and
genetic programming (GP). This article adopts the GBML
technique to provide a three-phase knowledge extraction
methodology, which makes continues and instant learning
while integrates multiple rule sets into a centralized
knowledge base. Moreover, the proposed system and GP
are both applied to the theoretical and empirical
experiments. Results for both approaches are presented
and compared. This paper makes two important
contributions: (1) it uses three criteria (accuracy,
coverage, and fitness) to apply the knowledge
extraction process which is very effective in selecting
an optimal set of rules from a large population; (2)
the experiments prove that the rule sets derived by the
proposed approach are more accurate than GP.",
-
bibdate = "2008-03-11",
-
bibsource = "DBLP,
http://dblp.uni-trier.de/db/journals/soco/soco11.html#ChenCCHH07",
- }
Genetic Programming entries for
Mu-Yen Chen
Kuang-Ku Chen
Heien-Kun Chiang
Hwa-Shan Huang
Mu-Jung Huang
Citations