基于ESOINN的BCG信号Shapelet特征学习方法

Zimin Wang, Yumeng Wang, Yuhong Meng, Li Zeng, Zhenbing Liu, Rushi Lan
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引用次数: 1

摘要

BCG信号是诊断心血管疾病的有效信息。本文分析了一种基于ESOINN的BCG信号Shapelet特征学习方法。首先,利用增强的自组织增量无监督神经网络(ESOINN)对原始BCG信号进行预学习;然后,用shapelet变换算法对其进行变换;最后,采用特征选择方法从候选集中选择shapelet特征,并对分类器进行训练。结果表明,该方法可以学习到质量较好的候选集,大大减少了候选集的数量。此外,大大降低了shapelet特征的学习时间复杂度,提高了模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shapelet Feature Learning Method of BCG Signal Based on ESOINN
Ballistocardiogram (BCG) signal is an effective information that can be used to diagnose cardiovascular disease. This paper analyzes a method of learning the Shapelet feature of BCG signal based on ESOINN. Firstly, the original BCG signal is pre-learned using an enhanced self-organizing incremental unsupervised neural network (ESOINN); Then, it's transformed by the shapelet transform algorithm; Finally, the feature selection method is used to select the shapelet feature from the candidate set, and carry out the training of the classifier. The results show that the method can learn the better quality shapelet candidate set, and greatly reduce the number of candidate sets. In addition, the learning time complexity of shapelet features is greatly reduced, and the accuracy of the model is improved.
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