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Book Chapter
Empirical Evaluation of Feature Subset Selection Based on a Real-World Data Set
Book Series
Lecture Notes in Computer Science
Publisher
Springer Berlin / Heidelberg
ISSN
0302-9743 (Print) 1611-3349 (Online)
Volume
Volume 1910/2000
Book
Principles of Data Mining and Knowledge Discovery
DOI
10.1007/3-540-45372-5
Copyright
2000
ISBN
978-3-540-41066-9
DOI
10.1007/3-540-45372-5_68
Pages
195-232
Subject Collection
Computer Science
SpringerLink Date
Saturday, January 01, 2000
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Empirical Evaluation of Feature Subset Selection Based on a Real-World Data Set
Petra Perner
4
and Chid Apte
5
(4)
IBM T.J. Watson Research Center, 10598 Yorktown Heights, NY, USA
(5)
Institute of Computer Vision and Applied Computer Sciences, Arno-Nitzsche-Str., 45,04277 Leipzig
Abstract
Selecting the right set of features for classification is one of the most important problems in designing a good classifier. Decision tree induction algorithms such as C4.5 have incorporated in their learning phase an automatic feature selection strategy while some other statistical classification algorithm require the feature subset to be selected in a preprocessing phase. It is well know that correlated and irrelevant features may degrade the performance of the C4.5 algorithm. In our study, we evaluated the influence of feature pre-selection on the prediction accuracy of C4.5 using a real-world data set. We observed that accuracy of the C4.5 classifier can be improved with an appropriate feature preselection phase for the learning algorithm.
Petra
Perner
Email:
ibaiperenr@aol.com
Chid
Apte
URL:
http://www.ibai-research.de
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