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Analysis of Resampling Method for Arrhythmia Classification Using Random Forest Classifier with Selected Features

机译:随机林分类,采用选定特征分析对心律分类的重采样方法

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There are many developed techniques to be experienced for biomedical data mining. Due to the growing number of cardiac patients, many data are stored by different organizations. It helps to work with data mining for medical signals. Here In this work, an attempt for analysis and classification of arrhythmia cardiac disease is taken by authors. Data collected from the UCI repository to validate the purposed method. The features from the data are chosen using correlation-based feature selection (CFS) method due to the elimination of redundant data. For better processing and classification the selected data is to be resampled and is done in this work using random sampling. Random forest classifier is used for classification purpose. The performance is evaluated with resampled data and exhibited in result section. It is found that the average accuracy is 96% with random resampling technique.
机译:生物医学数据挖掘有许多开发的技术。由于心脏患者数量越来越多,许多数据由不同的组织存储。它有助于使用数据挖掘用于医疗信号。在这项工作中,作者采取了对心律失常心脏病的分析和分类的尝试。从UCI存储库收集的数据以验证所用方法。由于消除了冗余数据,使用基于相关的特征选择(CFS)方法来选择来自数据的特征。有关更好的处理和分类,所选数据将重新采样,并且在此工作中使用随机采样完成。随机林分类器用于分类目的。使用重采样数据进行评估,并在结果部分中展示。结果发现,随机重采采样技术,平均精度为96%。

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