Title
An Embedded Feature Selection Framework For Hybrid Data
Abstract
Feature selection in terms of inductive supervised learning is a process of selecting a subset of features relevant to the target concept and removing irrelevant and redundant features. The majority of feature selection methods, which have been developed in the last decades, can deal with only numerical or categorical features. An exception is the Recursive Feature Elimination under the clinical kernel function which is an embedded feature selection method. However, it suffers from low classification performance. In this work, we propose several embedded feature selection methods which are capable of dealing with hybrid balanced, and hybrid imbalanced data sets. In the experimental evaluation on five UCI Machine Learning Repository data sets, we demonstrate the dominance and effectiveness of the proposed methods in terms of dimensionality reduction and classification performance.
Year
DOI
Venue
2017
10.1007/978-3-319-68155-9_11
DATABASES THEORY AND APPLICATIONS, ADC 2017
Field
DocType
Volume
Data mining,Data set,Dimensionality reduction,Feature selection,Computer science,Categorical variable,Supervised learning,Hybrid data,Recursion,Kernel (statistics)
Conference
10538
ISSN
Citations 
PageRank 
0302-9743
0
0.34
References 
Authors
13
3
Name
Order
Citations
PageRank
Forough Rezaei Boroujeni100.68
Bela Stantic219838.54
Sen Wang347737.24