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Big Data ; 10(5): 371-387, 2022 10.
Article in English | MEDLINE | ID: mdl-34881989

ABSTRACT

To predict the class level of any classification problem, predictive models are used and mostly a single predictive model is built to predict the class level of any classification problem; current research considers multiple predictive models to predict the class level. Ensemble modeling means instead of building a single predictive model, it is proposed to build a multilevel predictive model, which generalizes to predict all the class levels with an adequate percent of accuracy, that is, from 70% to 90% by applying and using a different combination of classification algorithms. In this article, a multilevel approach for selecting base classifiers for building an ensemble classification model is proposed. The rudimentary concept behind this approach is to drop lousy performing features and collinearity from the selected data set for ensemble modeling. For the evaluation of the proposed multilevel predictive model, different data sets from the University of California, Irvine, repository have been used and comparisons with the modern classifier's models have been conducted. The implementation analyses demonstrate the potency and excellence of the novel approach when compared with other modern classification models (three-layered artificial neural network, Radial Variant Function Neural Network/Fish Swarm Algorithm). The classification accuracy achieved with selected algorithms lies in the range of 70%-88.3%. Among all the selected classification algorithms, the lowest accuracy is achieved by the naive Bayes algorithm, which is close to 71.9%. However, the proposed algorithm (NB-RF-LR-SEMod), which is a combination of different classifiers, achieved a maximum accuracy of 88.3% on the Photographic and Imaging Manufacturers Association Diabetes data set, which is, by far, the best to any single classifier. Hence, this proposed work is helpful for any health care official to detect the diabetes problem at an early stage and prevent the affected person from future complications of it.


Subject(s)
Algorithms , Neural Networks, Computer , Animals , Bayes Theorem , Machine Learning
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