Přístupnostní navigace
E-application
Search Search Close
Publication detail
DROTÁR, P. SMÉKAL, Z.
Original Title
COMPARATIVE STUDY OF MACHINE LEARNING TECHNIQUES FOR SUPERVISED CLASSIFICATION OF BIOMEDICAL DATA
Type
journal article - other
Language
English
Original Abstract
Several classification methods have been widely used in literature for identification of diseases or differential diagnosis of various types of disorders. Classification methods such as support vector machines, random forests, AdaBoost, deep belief networks, K- nearest neighbors, linear discriminant analysis or perceptron are probably the most popular ones. Even if these methods are frequently used there is a lack of comparison between them to find better framework for classification. In this study, we compared performance of the above mentioned classification methods. The 10-fold cross validation was used to calculate accuracy and Matthews correlation coefficient of the classifiers. In each case these methods were applied to eight binary biomedical datasets. The same evaluation was realized also in conjunction with feature selection technique that passed only hundred most relevant features. Even though there is no single classification method that dominates in terms of performance, we found that some methods provide more consistent performance than others.
Keywords
SVM, AdaBoost, Random Forests, Deep Belief Networks, bioinformatics, microarray
Authors
DROTÁR, P.; SMÉKAL, Z.
RIV year
2014
Released
30. 9. 2014
Publisher
Technical University of Kosice
Location
Kosice
ISBN
1335-8243
Periodical
Acta Electrotechnica et Informatica
Year of study
Number
3
State
Slovak Republic
Pages from
5
Pages to
10
Pages count
6
URL
http://www.aei.tuke.sk/papers/2014/3/01_Drotar.pdf
BibTex
@article{BUT112064, author="Peter {Drotár} and Zdeněk {Smékal}", title="COMPARATIVE STUDY OF MACHINE LEARNING TECHNIQUES FOR SUPERVISED CLASSIFICATION OF BIOMEDICAL DATA", journal="Acta Electrotechnica et Informatica", year="2014", volume="2014", number="3", pages="5--10", doi="10.15546/aeei-2014-0021", issn="1335-8243", url="http://www.aei.tuke.sk/papers/2014/3/01_Drotar.pdf" }