Affiliation:
1. Megatrend University, Faculty of Computer Science, Belgrade
Abstract
We presented a comparison between several feature ranking methods used on two
real datasets. We considered six ranking methods that can be divided into two
broad categories: statistical and entropy-based. Four supervised learning
algorithms are adopted to build models, namely, IB1, Naive Bayes, C4.5
decision tree and the RBF network. We showed that the selection of ranking
methods could be important for classification accuracy. In our experiments,
ranking methods with different supervised learning algorithms give quite
different results for balanced accuracy. Our cases confirm that, in order to
be sure that a subset of features giving the highest accuracy has been
selected, the use of many different indices is recommended.
Publisher
National Library of Serbia
Subject
Management Science and Operations Research
Cited by
129 articles.
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