Prediction of arrhythmia from MIT-BIH database using random forest (RF) and voted perceptron (VP) classifiers

The main purpose of the study is to predict arrhythmia from the MIT-BIH database using Random Forest (RF) and Voted Perceptron (VP) classifiers. Materials and Methods: The proposed study uses the RF and VP Machine learning Algorithms to predict the arrhythmia using MIT-BIH dataset with healthy (n=65...

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Bibliographic Details
Published inAIP conference proceedings Vol. 2822; no. 1
Main Authors Vinutha, K., Thirunavukkarasu, Usharani
Format Journal Article Conference Proceeding
LanguageEnglish
Published Melville American Institute of Physics 14.11.2023
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Summary:The main purpose of the study is to predict arrhythmia from the MIT-BIH database using Random Forest (RF) and Voted Perceptron (VP) classifiers. Materials and Methods: The proposed study uses the RF and VP Machine learning Algorithms to predict the arrhythmia using MIT-BIH dataset with healthy (n=65) and Arrhythmia (n=65) ECG signals collected from IEEE data port in .XLSX format for our study with alpha value as 0.05, 95% as CI, power as 80% and enrolment ratio as 1. The classification of arrhythmia and healthy subjects was performed using WEKA 3.8.5, a data mining tool. The statistical analysis was performed on IBM SPSS software version 21. RESULTS: The statistical significant difference (p<.000) was observed between RF and VP classifiers. Conclusion: The classifiers have been trained, tested, validated using 10 fold cross-validation in WEKA software, the innovative voted perceptron classifier has achieved a higher classification accuracy rate (88.86)% than RF classifier (87.06)%.
Bibliography:ObjectType-Conference Proceeding-1
SourceType-Conference Papers & Proceedings-1
content type line 21
ISSN:0094-243X
1551-7616
DOI:10.1063/5.0173192