A hybrid feature selection method using multiclass SVM for diagnosis of erythemato-squamous disease
Penulis/Author
MARYAM (1); Ir. Noor Akhmad Setiawan, S.T., M.T., Ph.D., IPM. (2); Prof. Ir. Oyas Wahyunggoro, MT., Ph.D. (3)
Tanggal/Date
2017
Kata Kunci/Keyword
Abstrak/Abstract
The diagnosis of erythemato-squamous disease is a complex problem and difficult to detect in dermatology. Besides that, it is a major cause of skin cancer. Data mining implementation in the medical field helps expert to diagnose precisely, accurately, and inexpensively. In this research, we use data mining technique to developed a diagnosis model based on multiclass SVM with a novel hybrid feature selection method to diagnose erythemato-squamous disease. Our hybrid feature selection method, named ChiGA (Chi Square and Genetic Algorithm), uses the advantages from filter and wrapper methods to select the optimal feature subset from original feature. Chi square used as filter method to remove redundant features and GA as wrapper method to select the ideal feature subset with SVM used as classifier. Experiment performed with 10 fold cross validation on erythemato-squamous diseases dataset taken from University of California Irvine (UCI) machine learning database. The experimental result shows that the proposed model based multiclass SVM with Chi Square and GA can give an optimum feature subset. There are 18 optimum features with 99.18?curacy.
Level
Internasional
Status
Dokumen Karya
No
Judul
Tipe Dokumen
Aksi
1
7 Paper.pdf
[PAK] Full Dokumen
2
A hybrid feature selection method using multiclass SVM for diagnosis of erythemato-squamous disease.pdf