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Evolving neural networks using a genetic algorithm for heartbeat classification.

机译:使用遗传算法进行心跳分类的不断发展的神经网络。

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This study investigates the effectiveness of a genetic algorithm (GA) evolved neural network (NN) classifier and its application to the classification of premature ventricular contraction (PVC) beats. As there is no standard procedure to determine the network structure for complicated cases, generally the design of the NN would be dependent on the user's experience. To prevent this problem, we propose a neural classifier that uses a GA for the determination of optimal connections between neurons for better recognition. The MIT-BIH arrhythmia database is employed to evaluate its accuracy. First, the topology of the NN was determined using the trial and error method. Second, the genetic operators were carefully designed to optimize the neural network structure. Performance and accuracy of the two techniques are presented and compared.
机译:这项研究调查了遗传算法(GA)进化神经网络(NN)分类器的有效性及其在心室早搏(PVC)搏动分类中的应用。由于没有确定复杂情况下网络结构的标准程序,因此,NN的设计通常取决于用户的经验。为避免此问题,我们提出了一种神经分类器,该算法使用GA来确定神经元之间的最佳连接,以实现更好的识别。 MIT-BIH心律失常数据库用于评估其准确性。首先,使用试错法确定NN的拓扑。其次,精心设计了遗传算子以优化神经网络结构。介绍并比较了这两种技术的性能和准确性。

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