Conference Proceedings

Third International Conference on Advances in Bio-Informatics and Environmental Engineering - ICABEE 2015

Comparison of Classification Techniques on Dermatological Dataset

Author(s) : KEMAL TUTUNCU, MURAT KOKLU

Abstract

Data mining is the process of analysing data and summarizing it into useful information. One of main problem in the field of data mining is classification. Having done in this study, Simple Logistic Regression, Bayes Net, Naïve Bayes, Radial Basis Function Network (RBF), Multilayer Perceptron (MLP), Naïve Bayes Tree (NB Tree), Sequential Minimal Optimization (SMO), J48, Random Tree and ZeroR classification methods were applied on dermatology data set by UCI Machine Learning Repository. When comparing the performances of algorithms it’s been found that Simple Logistic Regression and Bayes Net have highest accuracies whereas ZeroR had the worst accuracy. The results were also compared with previous studies in the literature. It has been seen that Simple Logistic Regression and Bayes Net had promising results when they compared with the methods used in literature.

Conference Title : Third International Conference on Advances in Bio-Informatics and Environmental Engineering - ICABEE 2015
Conference Date(s) : 10-11 December, 2015
Place : Hotel Novotel Roma La Rustica, Rome, Italy
No fo Author(s) : 2
DOI : 10.15224/978-1-63248-078-1-119
Page(s) : 76 - 79
Electronic ISBN : 978-1-63248-078-1
Views : 597   |   Download(s) : 175