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CLASSIFICATION OF DIABETES USING ENSEMBLE MACHINE LEARNING TECHNIQUES.

Authors :
G. R., ASHISHA
X., ANITHA MARY
J., MAHIMAI RAJA
Source :
Scalable Computing: Practice & Experience; Jul2024, Vol. 25 Issue 4, p3172-3180, 9p
Publication Year :
2024

Abstract

Diabetes is a widespread chronic condition that impacts people all over the globe and requires a clear and timely diagnosis. Untreated diabetes leads to retinopathy, nephropathy, and damage to the nervous system. In this context, Machine Learning (ML) might be used to detect health problems early, diagnose them, and track their progress. Ensemble techniques are a promising approach that combines many classifiers to improve forecast accuracy and resilience. This study investigates the categorization of diabetes using an ensemble machine learning technique known as a voting classifier. Using a variety of classifiers, including Light Gradient Boosting Machine (LightGBM), Gradient Boost classifier (GBC), and Random Forest (RF). The predictions are aggregated using voting methods to get a final classification result. The research is carried out using two benchmarking datasets: the Pima Indian Diabetes Dataset (PIDD) and the German Dataset. The Boruta technique is used to choose the best attributes from the datasets, while the Random Over Sampling approach balances the range of classes and eliminates abnormal data using the interquartile range approach. The findings showed that the combination of the Boruta feature selection algorithm and ensemble Voting Classifier performed better for both PIDD and German datasets with an accuracy of 93% and 90% respectively. These algorithms are evaluated and the maximum accuracy is produced using the combination of the Boruta feature selection algorithm and ensemble Voting Classifier. This research helps medical professionals in the early prediction of diabetes, reducing physician's time. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
18951767
Volume :
25
Issue :
4
Database :
Complementary Index
Journal :
Scalable Computing: Practice & Experience
Publication Type :
Academic Journal
Accession number :
177937640
Full Text :
https://doi.org/10.12694/scpe.v25i4.2873