Improving of Diabetes Diagnosis using Ensembles and Machine Learning Methods

  • Razieh Asgarnezhad
  • Karrar Ali Mohsin Alhameedawi
Keywords: Data Mining, Diabetes Mellitus, Pre-processing, Ensembles, Machine Learning

Abstract

Diabetes is one of the most common metabolic diseases, and diagnosis of it is a classification problem. The most challenge is this area is missing value problem. Artificial Intelligence techniques have been successfully implemented over medical disease diagnoses. Classification systems aim clinicians to predict the risk factors that cause diabetes. To address this challenge, we introduce a novel model to investigate the role of pre-processing and data reduction for classification problems in the diagnosis of diabetes. The model has four stages consists of Pre-processing, Feature sub-selection, Classification, and Performance. In the classification technique, ensemble techniques such as bagging, boosting, stacking, and voting were used. We considered both states with/without for pre-processing stage to reveal the high performance of our model. Two experiments were conducted to reveal the performance of the model for the diagnosis of diabetics Mellitus. The results confirmed the superiority of the proposed method over the state-of-the-art systems, and the best accuracy and F1 achieved 97.12% and 97.40%, respectively.

References

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Published
2022-03-01
How to Cite
Asgarnezhad, R., & Alhameedawi, K. A. M. (2022). Improving of Diabetes Diagnosis using Ensembles and Machine Learning Methods. Majlesi Journal of Telecommunication Devices, 11(1), 33-41. https://doi.org/10.52547/mjtd.11.1.33
Section
Articles