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Table 8 presents accuracy, sensitivity, specificity and F- measure of individual classifiers averaged over the four heart disease benchmark datasets. The results show that SVM, NN and Auto MLP have better accuracy as compared to other classifiers. This results in another  combination of classifiers for our Ensemble 5 (NN, SVM, AutoMLP).  (NN, SVM, Perceptron). Similarly, in Table 7, we have evaluated the performances of different individual classifiers for Long Beach data set. The results show that Decision Tree, Naive Bayes and AutoMLP have better accuracy as compared to other techniques. Moreover, NB also has better sensitivity, specificity and accuracy. Additionally, DT, NB and AutoMLP also have low classification error. Furthermore, NB has low absolute and  relative error as compared to other techniques. This results in the development of Ensemble 4 (DT, NB, AutoMLP).

Table 8 presents accuracy, sensitivity, specificity and F- measure of individual classifiers averaged over the four heart disease benchmark datasets. The results show that SVM, NN and Auto MLP have better accuracy as compared to other classifiers. This results in another combination of classifiers for our Ensemble 5 (NN, SVM, AutoMLP). (NN, SVM, Perceptron). Similarly, in Table 7, we have evaluated the performances of different individual classifiers for Long Beach data set. The results show that Decision Tree, Naive Bayes and AutoMLP have better accuracy as compared to other techniques. Moreover, NB also has better sensitivity, specificity and accuracy. Additionally, DT, NB and AutoMLP also have low classification error. Furthermore, NB has low absolute and relative error as compared to other techniques. This results in the development of Ensemble 4 (DT, NB, AutoMLP).