Diabetes Prediction Using Ensembling of Different Machine Learning Classifiers
Khulna University of Engineering and Technology · Oregon Institute of Technology
Abstract
Diabetes, also known as chronic illness, is a group of metabolic diseases due to a high level of sugar in the blood over a long period. The risk factor and severity of diabetes can be reduced significantly if the precise early prediction is possible. The robust and accurate prediction of diabetes is highly challenging due to the limited number of labeled data and also the presence of outliers (or missing values) in the diabetes datasets. In this literature, we are proposing a robust framework for diabetes prediction where the outlier rejection, filling the missing values, data standardization, feature selection, K-fold cross-validation, and different Machine Learning (ML) classifiers (k-nearest Neighbour,…
Citation impact
- FWCI
- 88.02
- Percentile
- 100%
- References
- 63
Authors
5- MKMd. Kamrul HasanCorresponding
Khulna University of Engineering and Technology
- MAMd. Ashraful Alam
Khulna University of Engineering and Technology
- DDDola Das
Khulna University of Engineering and Technology
- EHEklas Hossain
Oregon Institute of Technology
- MHMahmudul Hasan
Khulna University of Engineering and Technology
Topics & keywords
- Artificial intelligence
- Naive Bayes classifier
- Random forest
- Computer science
- Machine learning
- AdaBoost
- Multilayer perceptron
- Hyperparameter
- Good health and well-being