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Feature Selection using a Genetic Algorithm for the Detection of Abnormal ECG Recordings

机译:使用遗传算法的特征选择来检测异常心电图记录

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摘要

A new classification algorithm, called CFI (for Classification on, Feature Intervals), is developed and applied to problem of detecting abnormal ECG signals. The domain contains records of patients with known diagnosis. Given a training set of such records the CFI learns how to detect arrhythmia. CFI represents a concept in the form of feature intervals on each feature dimension separately. Classification in the CFI algorithm is based on a real-valued voting. A genetic algorithm is used to select the set of relevant features. Each selected feature equally participates in the voting process and the class that receives the maximum amount of votes is declared to be the predicted class. The performance of the CFI classifier is evaluated empirically in terms of classification accuracy and running time.
机译:开发了一种称为CFI(用于特征间隔分类)的新分类算法,并将其应用于检测异常ECG信号的问题。该域包含诊断已知的患者的记录。给定经过培训的此类记录,CFI将学习如何检测心律不齐。 CFI以每个要素维上的要素间隔的形式表示一个概念。 CFI算法中的分类基于实值投票。遗传算法用于选择相关特征集。每个选定的要素均等地参与投票过程,并且将获得最大票数的类别声明为预测类别。根据分类准确性和运行时间,根据经验评估CFI分类器的性能。

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