Published February 29, 2020 | Version v1
Journal article Open

ENN-Ensemble based Neural Network method for Diabetes Classification

  • 1. Dept of CSEGitam institute of Technology, Gitam University Visakhapatnam, India
  • 2. Professor and Head,Dept.of Information Technology Anil Neerukonda Institute of Technology &Sciences, Visakhapatnam,India
  • 3. Professor and Head, Department of Information Technology JNTUK-University College of Engineering ,Vizianagaram, India
  • 1. Publisher

Description

Diabetes is considered as one of the most chronic disease which has serious impact on human health and leading cause of mortality worldwide. The early prediction of diabetes can help clinicians to provide a better diagnosis to the patients. Recently, computed aided diagnosis systems have gained attention due to significant growth in data mining, and machine learning. Several approaches are present based on the machine learning techniques but due to poor classification performance and computational complexity, it becomes difficult to utilize for real-time applications. Ensemble classification approaches have reported a noteworthy improvement in diabetes classification but desired accuracy is still a challenging task. Hence, in this work we introduce a combined hybrid approach called as ENN Ensemble based neural network approach for diabetes classification. In this approach, a feature selection process is presented using neighboring search technique; the selected features are processed through the feature ranking model to generate the efficient feature subset for better classification accuracy. Finally, these features are learned and classified using neural network classifier. The experimental study shows that the proposed approach achieves better accuracy when compared with the existing techniques.

Files

C4819029320 (1).pdf

Files (985.3 kB)

Name Size Download all
md5:d58dbf2e6fdd6a0a47dd7a348c93676c
985.3 kB Preview Download

Additional details

Related works

Is cited by
Journal article: 2249-8958 (ISSN)

Subjects

ISSN
2249-8958
Retrieval Number
C4819029320/2020┬ęBEIESP