Title of article :
Intelligent application for Heart disease detection using Hybrid Optimization algorithm
Author/Authors :
Eskandari, Marzieh Department of computer science - Alzahra University, Tehran , Hassani, Zeinab Department of computer science - Kosar University of Bojnord
Abstract :
Prediction of heart disease is very important because it
is one of the causes of death around the world. More-
over, heart disease prediction in the early stage plays
a main role in the treatment and recovery disease and
reduces costs of diagnosis disease and side eects it. Ma-
chine learning algorithms are able to identify an eective
pattern for diagnosis and treatment of the disease and
identify eective factors in the disease. this paper is in-
vestigated a new hybrid algorithm of Whale Optimiza-
tion and Dragon
y algorithm using a machine learning
algorithm. the hybrid algorithm employs a Support Vec-
tor Machine algorithm for eective Prediction of heart
disease. Proposed method is evaluated by Cleveland
standard heart disease dataset. The experimental re-
sult indicates that the SVM accuracy of 88.89 % and
nine features are selected in this respect.
Keywords :
Hybrid Optimization Algorithm , Support Vector Machine , Whale Optimization Algorithm , Dragon y Algo- rithm , Feature Selection
Journal title :
Astroparticle Physics