基于多准则决策的腕部脉搏信号聚类

B. Dong, Peihuan Gao, Hongwu Wang, Shizhong Liao
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引用次数: 6

摘要

在本文中,我们通过多准则决策(MCDM)框架对未标记的人类手腕脉冲信号数据集进行聚类,以挖掘有用的信息供进一步研究。首先,执行预处理方案,提取空间特征来表示脉冲信号。然后,初始化聚类算法列表以生成一些聚类备选方案。采用包含10个内部聚类验证指标和一个自适应指标(抗噪声鲁棒性指标)的11个指标对聚类方案的优劣进行了综合评价,该指标被用于评估具有空间特征的脉冲数据集的聚类方案。以评价结果为输入,采用TOPSIS法求解得到的MCDM模型。根据TOPSIS排名,通过k-means将数据集聚成13个簇是最优的。从每个聚类中抽取的样本具有相似的模式,对应于中国传统脉象诊断中的特定脉象类型。将13个聚类分为健康和不健康两组,进一步应用于不健康脉搏检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering Human Wrist Pulse Signals via Multiple Criteria Decision Making
In this paper, we cluster a unlabeled human wrist pulse signal data set via a multiple criteria decision making (MCDM) framework to mine useful information for further study. First, a preprocessing scheme is performed and spatial features are extracted to represent a pulse signal. Then, a list of clustering algorithms are initialized to generate a number of clustering alternatives. The goodness of these clustering alternatives are sequentially comprehensively evaluated by 11 criteria, including ten internal cluster validation indices and an ad-hoc index, the robustness to noise, which is proposed for assessing the clustering alternatives of the pulse data set with spatial features. Taking the evaluation results as inputs, the technique for order preference by similarity to ideal solution (TOPSIS) method is employed to solve the resulting MCDM model. According to the TOPSIS rank, clustering the data set into thirteen clusters via k-means is optimal. Samples drawn from each cluster have similar patterns, corresponding to specific pulse type in traditional Chinese pulse diagnosis. The thirteen clusters are segregated into two groups, namely the healthy and the unhealthy, which can be further applied for unhealthy pulse detection.
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