Book ChapterUnknown
Reduction of Overfitting in Diabetes Prediction Using Deep Learning Neural Network
Author Affiliations
University of Asia Pacific, University of Ulsan, Electronics and Telecommunications Research Institute
Published InLecture notes in electrical engineering
Year2017
Citations108
Abstract
Accurate prediction of diabetes is an important issue in health prognostics. However, data overfitting degrades the prediction accuracy in diabetes prognosis. In this paper, a reliable prediction system for the disease of diabetes is presented using a dropout method to address the overfitting issue. In the proposed method, deep learning neural network is employed where fully connected layers are followed by dropout layers. The proposed neural network outperforms other state-of-art methods in better prediction scores for the Pima Indians Diabetes Data Set.
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