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NMF in Screening Some Spirometric Data,an Insight into 12-Dimensional Data Space

机译:NMF筛选某些肺活量数据,深入了解12维数据空间

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We present the usage of the Non-negative Matrix Factorization (NMF), an unsupervised machine learning method, which learns normal and abnormal state of patient's ventilatory systems. This is done using samples of patients having defects of obturative and restrictive kind and a control group. We show that the NMF method can identify patients being in the normal state and screen them off from the remaining patients; however the kind of the ventilatory disorder for the remaining patients is not recognized. This is confronted with clustering provided by the k-means method and visualization of the 12-dimensional data using heatmaps and Kohonen's self-organizing maps. The data set can be reconstructed with a 0.9746 accuracy (fraction of explained variance) from 6 base vectors provided by the NMF and using appropriate encoders provided also by the NMF; while 3 factors yield an 0.8573 fraction of explained variance.
机译:我们介绍了非负矩阵分解(NMF)的用法,这是一种无监督的机器学习方法,用于学习患者通气系统的正常和异常状态。使用具有闭塞和限制性类型缺陷的患者样本和对照组来完成。我们证明了NMF方法可以识别处于正常状态的患者,并从其余患者中筛选出来;但是,尚不了解其余患者的通气障碍类型。这是由k均值方法提供的聚类以及使用热图和Kohonen的自组织图可视化12维数据所面临的。可以使用NMF提供的6个基本矢量,并使用NMF提供的适当编码器,以0.9746的精度(解释方差的分数)重建数据集;而3个因子的解释方差为0.8573。

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