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arxiv: 1707.08386 · v1 · pith:JCF7ETTTnew · submitted 2017-07-26 · 💻 cs.CV

Reduction of Overfitting in Diabetes Prediction Using Deep Learning Neural Network

classification 💻 cs.CV
keywords diabetesnetworkneuraloverfittingpredictiondatadeepdropout
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Augmented accuracy in prediction of diabetes will open up new frontiers in health prognostics. Data overfitting is a performance-degrading issue in diabetes prognosis. In this study, a prediction system for the disease of diabetes is pre-sented where the issue of overfitting is minimized by using the dropout method. Deep learning neural network is used where both fully connected layers are fol-lowed by dropout layers. The output performance of the proposed neural network is shown to have outperformed other state-of-art methods and it is recorded as by far the best performance for the Pima Indians Diabetes Data Set.

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