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Fuzzy modeling based on Mixed Fuzzy Clustering for health care applications

机译:基于混合模糊聚类的医疗应用模糊建模

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This papers proposes two novel approaches for the identification of Takagi-Sugeno fuzzy models with time variant and invariant features. The proposed Mixed Fuzzy Clustering algorithm is proposed for determining the parameters of Takagi-Sugeno fuzzy models in two different ways: (1) the antecedent fuzzy sets are determined based on the partition matrix generated by the Mixed Fuzzy Clustering algorithm; (2) the input features are transformed using the same algorithm and the antecedent fuzzy sets are derived using Fuzzy C-Means clustering. The proposed approaches are tested on four different health care applications: readmissions in intensive care units, administration of vasopressors and mortality. The results show that the proposed clustering algorithm resulted in an increase of the performance of the fuzzy models in three out of four applications in comparison to the use of Fuzzy C-Means.
机译:本文提出了两种新颖的方法来识别具有时变和不变特征的Takagi-Sugeno模糊模型。提出了一种混合模糊聚类算法,以两种不同的方式确定高木-杉野模糊模型的参数:(1)基于混合模糊聚类算法生成的划分矩阵确定先验模糊集; (2)使用相同的算法对输入特征进行变换,并使用Fuzzy C-Means聚类推导先前的模糊集。在四种不同的医疗保健应用中对提议的方法进行了测试:重症监护病房的再入院,血管加压药的管理和死亡率。结果表明,与使用模糊C均值相比,所提出的聚类算法提高了四分之三应用程序中模糊模型的性能。

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