Abstract- Currently, there are many medical experts who face difficulty in conducting early detection for diabetic retinopathy. This occurs because it is difficult to recognize the early symptoms of this disease. In order for this disease to be detected early, an accurate classification method is required. Data mining concept is one alternative in conducting classification. This study was conducting by applying particle swarm optimization (PSO) method to select the best Diabetic Retinopathy feature based on diabetic retinopathy dataset. Then, the selected feature is further classified using classification method of neural network. The study result show that there is an increase in result by applying neural network based particle swarm optimization (PSO) of 76.11%. This study also show that there is an increase in classification result by using feature selection method of 4.35% from previous result of 71.76% by only applying neural network method.
Lembar Hasil Penilaian Sejawat Sebidang Atau Peer Review Karya Ilmiah : Proseding – 06 Feature Selection of Diabetic Retinopathy Disease Using Particle Swarm Optimization and Neural Network
Cover CITSM-Feature Selection of Diabetic Retinopathy Disease Using Particle Swarm Optimization and Neural Network
Karya Ilmiah : Prosiding - 06 Feature Selection of Diabetic Retinopathy Disease Using Particle Swarm Optimization and Neural Network - The 6th International Conference on Cyber and IT Service Management (CITSM 2018)
Karya Ilmiah : Sertifikat - 06 Feature Selection of Diabetic Retinopathy Disease Using Particle Swarm Optimization and Neural Network - The 6th International Conference on Cyber and IT Service Management (CITSM 2018)
Sertifikat Prosiding ICAISD 2020
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