Prediction of Bradycardia using Decision Tree Algorithm and Comparing the Accuracy with Support Vector Machine

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Abstract

This study compares the Accuracy of Support Vector Machine (SVM) Classifier and Decision Tree (DT) Classifier in predicting Innovative Bradycardia disease diagnosis. Materials and Methods: There are 7,500 records in the dataset that was used for this investigation. 40 records are utilized in the test to get a 95% confidence level in Accuracy and a 1% margin of error. There are 12 qualities or features per record. Using Decision Tree and SVM, Innovative Bradycardia disease is detected. Results: According to the statistical analysis, the Accuracy of the Decision Tree Classifier was 92.62%, P<0.05, and the Accuracy of the SVM was 87.5%, P<0.05. The p value was calculated as 0.001 (p<0.05, independent sample t-test indicating a statistically significant difference in the accuracy rates between the two algorithms (SVM and DT). Conclusion: In the Innovative Bradycardia prediction task, the Decision Tree Classifier (92.5%) exhibited a significant improvement over the SVM (87.5%), as demonstrated by the findings of the present study.

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Devisetty, G., & Kumar, N. S. (2023). Prediction of Bradycardia using Decision Tree Algorithm and Comparing the Accuracy with Support Vector Machine. In E3S Web of Conferences (Vol. 399). EDP Sciences. https://doi.org/10.1051/e3sconf/202339909004

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