- Turkish Journal of Mathematics and Computer Science
- Volume:2, 2014
- A Comparative Study of Heart Disease Prediction Based on Principal Component Analysis and Clustering...
A Comparative Study of Heart Disease Prediction Based on Principal Component Analysis and Clustering Methods
Authors : Negar ZİASABOUNCHİ, İman N ASKERZADE
Pages : 1-11
View : 19 | Download : 2
Publication Date : 2016-05-26
Article Type : Research Paper
Abstract :In this article, we propose clustering approach based on Principal Component Analysis insert ignore into journalissuearticles values(PCA); to diagnosis of heart disease patients. At the first stage, the original dataset is reduced using PCA reduction method. Then, at the second stage, reduced dataset is applied to clustering methods which is based on fuzzy C-means and K-means algorithms. These algorithms are implemented and tested on a Cleveland heart disease dataset. We compared the clustering results with and without PCA. The results are suggesting that the combination of clustering algorithms and PCA was the most effective at heart disease diagnosis.Keywords : Data Clustering, K means, Fuzzy C means, Principal Component Analysis