Abnormal ECG Detection using Optimized Boosting Tree Classifier

Aditi Mohapatra, Ananya Dastidar, Saumendra Kumar Mohapatra, M. Mohanty
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Abstract

ECG plays an important role in cardiac disease diagnosis. Classification of this cardiac signal using machine learning techniques will be a supportive tool for the physicians. Authors in this work have classified the ECG by using three different types of classifiers such as Support vector machine (SVM), Gradient boosting, and extreme gradient boosting (XGBoost). The standard statistical features are considered as input to the classifiers. For improving the learning strategy and performance of the proposed models subjected to accuracy, the learning rates are varied for each node of the tree-based ensemble classifiers. Also, the hyperparameters of the XGBoost model are optimized by applying the Bayesian optimization (BO) technique. The best accuracy in SVM classifier is found as 91.69%. 96.58% accuracy is obtained in the modified gradient boosting model. The optimized XGBoost model is providing 100% accuracy which is better than other.
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基于优化增强树分类器的异常心电检测
心电图在心脏病诊断中起着重要的作用。使用机器学习技术对这种心脏信号进行分类将是医生的辅助工具。在这项工作中,作者使用三种不同类型的分类器,如支持向量机(SVM),梯度增强和极端梯度增强(XGBoost),对ECG进行了分类。标准统计特征被视为分类器的输入。为了提高模型的学习策略和性能,在保证精度的前提下,基于树的集成分类器的每个节点的学习率是不同的。同时,利用贝叶斯优化技术对XGBoost模型的超参数进行了优化。发现SVM分类器的最佳准确率为91.69%。修正梯度增强模型的准确率为96.58%。优化后的XGBoost模型提供了100%的准确率,优于其他模型。
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