Publication:
Classifier ensemble methods in feature selection

cris.virtual.department#PLACEHOLDER_PARENT_METADATA_VALUE#
cris.virtual.orcid#PLACEHOLDER_PARENT_METADATA_VALUE#
cris.virtualsource.departmentad164cb7-ed66-41f4-b8c1-17ad1e978522
cris.virtualsource.orcidad164cb7-ed66-41f4-b8c1-17ad1e978522
dc.contributor.affiliationTurk Hava Kurumu University; Turkish Aeronautical Association
dc.contributor.authorKiziloz, Hakan Ezgi
dc.date.accessioned2024-06-25T11:46:21Z
dc.date.available2024-06-25T11:46:21Z
dc.date.issued2021
dc.description.abstractFeature selection has become an indispensable preprocessing step in an expert system. Improving the feature selection performance could guide such a system to make better decisions. Classifier ensembles are known to improve performance when compared to the use of a single classifier. In this study, we aim to perform a formal comparison of different classifier ensemble methods on the feature selection domain. For this purpose, we compare the performances of six classifier ensemble methods: a greedy approach, two average-based approaches, two majority voting approaches, and a meta-classifier approach. In our study, the classifier ensemble involves five machine learning techniques: Logistic Regression, Support Vector Machines, Extreme Learning Machine, Naive Bayes, and Decision Tree. Experiments are carried on 12 well-known datasets, and results with statistical tests are provided. The results indicate that ensemble methods perform better than single classifiers, yet, they require a longer execution time. Moreover, they can minimize the number of features better than existing ensemble algorithms, namely Random Forest, AdaBoost, and Gradient Boosting, in a less amount of time. Among ensemble methods, the greedy based method performs well in terms of both classification accuracy and execution time. (c) 2020 Elsevier B.V. All rights reserved.
dc.description.doi10.1016/j.neucom.2020.07.113
dc.description.endpage107
dc.description.pages11
dc.description.researchareasComputer Science
dc.description.startpage97
dc.description.urihttp://dx.doi.org/10.1016/j.neucom.2020.07.113
dc.description.volume419
dc.description.woscategoryComputer Science, Artificial Intelligence
dc.identifier.issn0925-2312
dc.identifier.urihttps://acikarsiv.thk.edu.tr/handle/123456789/1402
dc.language.isoEnglish
dc.publisherELSEVIER
dc.relation.journalNEUROCOMPUTING
dc.subjectFeature selection; Multiobjective optimization; Machine learning; Classifier ensemble
dc.subjectALGORITHMS
dc.titleClassifier ensemble methods in feature selection
dc.typeArticle
dspace.entity.typePublication

Files