Classifier-independent feature selection on the basis of divergence criterion

被引:1
|
作者
Naoto Abe
Mineichi Kudo
Jun Toyama
Masaru Shimbo
机构
[1] Hokkaido University,Division of Computer Science, Graduate School of Information Science and Technology
[2] Hokkaido Information University,Faculty of Information Media
来源
关键词
Classifier-independent feature selection; Bayes classifier; Gaussian mixture; Garbage feature; J-divergence; Two-stage feature selection;
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学科分类号
摘要
Feature selection aims to choose a feature subset that has the most discriminative information from the original feature set. In practical cases, it is preferable to select a feature subset that is universally effective for any kind of classifier because there is no underlying information about a given dataset. Such a trial is called classifier-independent feature selection. We took notice of Novovičová et al.’s study as a classifier-independent feature selection method. However, the number of features have to be selected beforehand in their method. It is more desirable to determine a feature subset size automatically so as to remove only garbage features. In this study, we propose a divergence criterion on the basis of Novovičová et al.’s method.
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页码:127 / 137
页数:10
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