EFS-MI: an ensemble feature selection method for classification

Volume: 4, Issue: 2, Pages: 105 - 118
Published: Oct 10, 2017
Abstract
Feature selection methods have been used in various applications of machine learning, bioinformatics, pattern recognition and network traffic analysis. In high dimensional datasets, due to redundant features and curse of dimensionality, a learning method takes significant amount of time and performance of the model decreases. To overcome these problems, we use feature selection technique to select a subset of relevant and non-redundant features....
Paper Details
Title
EFS-MI: an ensemble feature selection method for classification
Published Date
Oct 10, 2017
Volume
4
Issue
2
Pages
105 - 118
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