Machine Learning Classifiers and Along with TPOT Classifier (Automl) to Predict the Readmission Patterns of Diabetic Patients

  • Siginamsetty P
  • et al.
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Abstract

Diabetes is seen as a common problem in the present running world. And till date 470million people globally in 2019, and it might be increased to 676million by the end of 2045.So day to day the diabetic has become a major problem, and due to the current technologies, we can easily predict the readmission of a patient based upon his digenesis. In this paper we are using c lassification algorithms to solve the problem by early predictions. And we can check it by using multiple hybrid classifiers, whatever the algorithm gives the best accuracy we are considering it as the generic model and it is going to predict the future di abetic patients. And we are considering the diabetic dataset mainly it consists of multiple features based upon the data we will consider as independent and dependent data, and solve the problem. Here, in this paper the algorithms which we are going to use are Logistic Regression(LR), Decision Trees, Random Forest (RF),XGboost,Gaussian Naïve Bayes , TPOT(automl).Out of them Random Forest gives the best accuracy which is about 95.2%, the accuracy is attained by following pre processing stage in a good manner , and handled all missing data.

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Siginamsetty, P., & Reddy, Dr. V. K. (2020). Machine Learning Classifiers and Along with TPOT Classifier (Automl) to Predict the Readmission Patterns of Diabetic Patients. International Journal of Recent Technology and Engineering (IJRTE), 9(1), 688–695. https://doi.org/10.35940/ijrte.f7415.059120

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