EAGA-MLP—An Enhanced and Adaptive Hybrid Classification Model for Diabetes Diagnosis

Volume: 20, Issue: 14, Pages: 4036 - 4036
Published: Jul 20, 2020
Abstract
Disease diagnosis is a critical task which needs to be done with extreme precision. In recent times, medical data mining is gaining popularity in complex healthcare problems based disease datasets. Unstructured healthcare data constitutes irrelevant information which can affect the prediction ability of classifiers. Therefore, an effective attribute optimization technique must be used to eliminate the less relevant data and optimize the dataset...
Paper Details
Title
EAGA-MLP—An Enhanced and Adaptive Hybrid Classification Model for Diabetes Diagnosis
Published Date
Jul 20, 2020
Journal
Volume
20
Issue
14
Pages
4036 - 4036
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