A novel method for diabetes classification and prediction with Pycaret

被引:0
|
作者
Pawan Whig
Ketan Gupta
Nasmin Jiwani
Hruthika Jupalle
Shama Kouser
Naved Alam
机构
[1] Vivekananda Institute of Professional Studies,
[2] University of The Cumberland,undefined
[3] Sardar Vallabhbhai National Institute of Technology,undefined
[4] Department of Computer Science Jazan University,undefined
[5] Jamia Hamdard University,undefined
来源
Microsystem Technologies | 2023年 / 29卷
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摘要
The incredible advances in biotechnology and public healthcare infrastructures have resulted in a massive output of vital and sensitive healthcare data. Many fascinating trends are discovered using intelligent data analysis approaches for the early identification and prevention of numerous severe illnesses. Diabetes mellitus is a highly hazardous condition since it leads to other deadly diseases such as heart, kidney, and nerve damage. In this research study, a low code Pycaret machine learning technique is used for diabetes categorization, detection, and prediction. On applying Pycaret various classifiers having different accuracies are produced and shown in the result section. After hyper tuning of various classifiers, it is found that the gradient boosting classifier is best further tuned and an accuracy of about 90% is achieved which is the highest among all existing ML classifiers.
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页码:1479 / 1487
页数:8
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