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Information Journal Paper

Title

Early Diagnosis of Diabetes Mellitus Using Data Mining and Classification Techniques

Author(s)

 Mahmoudinejad Dezfuli Seyed Ataaldin | Mahmoudinejad Dezfuli Seyedeh Razieh | Mahmoudinejad Dezfuli Seyed Vafaaldin | Kiani Younes | Issue Writer Certificate 

Pages

  0-0

Abstract

 Background: According to theWorld Health Organization, the seventh major cause of humandeath in 2030 will be diabetes, which of course is a very severe disease and if not treated thoroughly and on time, can lead to critical problems, including death. Accordingly, diabetes is one of the main priorities in medical science researches, which usually produce lots of information. The role of Data Mining methods in diabetes research is critical, which is considered as one of the optimum procedures of extracting knowledge from a large amount of diabetes-related data. Objectives: This research has focused on developing an ensemble system using data-mining methods based on three Classification methods, namely, Weighted K-Nearest Neighbor, simple Decision Tree and Logistic Regression algorithms to detect Diabetes Mellitus of the human. Methods: The proposed ensemble method algorithm applies votes given by each of the classifiers to attain the final result. This voting mechanism considers each estimation of the classifiers as an input to the ensemble system and then computes the statistical mode for its output to get the majority vote. Results: Apparently, these classifiers give the accuracy of 77. 00%, 77. 30%, 79. 30%, and 80. 60% for Decision Tree, Weighted K-Nearest Neighbor, Logistic Regression, and the ensemble method, respectively. Conclusions: The results of the proposed method illustrate an acceptable improvement of accuracy compared to other methods. Consequently, it supports the idea that hybrid approaches are more effective in comparison with the simple Classification methods that use classifiers separately.

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    APA: Copy

    Mahmoudinejad Dezfuli, Seyed Ataaldin, Mahmoudinejad Dezfuli, Seyedeh Razieh, Mahmoudinejad Dezfuli, Seyed Vafaaldin, & Kiani, Younes. (2019). Early Diagnosis of Diabetes Mellitus Using Data Mining and Classification Techniques. JUNDISHAPUR JOURNAL OF CHRONIC DISEASE CARE, 8(3), 0-0. SID. https://sid.ir/paper/747690/en

    Vancouver: Copy

    Mahmoudinejad Dezfuli Seyed Ataaldin, Mahmoudinejad Dezfuli Seyedeh Razieh, Mahmoudinejad Dezfuli Seyed Vafaaldin, Kiani Younes. Early Diagnosis of Diabetes Mellitus Using Data Mining and Classification Techniques. JUNDISHAPUR JOURNAL OF CHRONIC DISEASE CARE[Internet]. 2019;8(3):0-0. Available from: https://sid.ir/paper/747690/en

    IEEE: Copy

    Seyed Ataaldin Mahmoudinejad Dezfuli, Seyedeh Razieh Mahmoudinejad Dezfuli, Seyed Vafaaldin Mahmoudinejad Dezfuli, and Younes Kiani, “Early Diagnosis of Diabetes Mellitus Using Data Mining and Classification Techniques,” JUNDISHAPUR JOURNAL OF CHRONIC DISEASE CARE, vol. 8, no. 3, pp. 0–0, 2019, [Online]. Available: https://sid.ir/paper/747690/en

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