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Multivariate soft repulsive system identification for constructing rule-based classification systems: Application to trauma clinical data

机译:用于构建基于规则的分类系统的多元软排斥系统识别:在创伤临床数据中的应用

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摘要

Rule-based classification systems constructed upon linguistic terms in the antecedent and consequent of the rules lack sufficient generalization capabilities. This paper proposes a new multivariate fuzzy system identification algorithm to design binary rule-based classification structures through making use of the repulsive forces between the cluster prototypes of different class labels. This approach is coupled with the potential discrimination power of each dimension in the feature space to increase the generalization potential. To address this issue, first the multivariate variant of a newly proposed soft clustering algorithm along with its mathematical foundations is proposed. Next, the discriminatory power of each individual feature is computed, using the multivariate membership values in the proposed clustering algorithm to achieve the most accurate firing degree in each rule. The main advantage of this method is to handle unbalanced datasets yielding superior true positive measure while keeping the false positive rate low enough to avoid the natural bias toward class labels containing larger number of training samples. To validate the proposed approaches, a series of numerical experiments on publicly available datasets and a real clinical dataset collected by our team were conducted. Simulation results demonstrated achievement of the primary goals of this research. (C) 2017 Elsevier B.V. All rights reserved.
机译:在规则的前因和后果中基于语言术语构建的基于规则的分类系统缺乏足够的泛化能力。提出了一种新的多元模糊系统识别算法,利用不同类别标签的聚类原型之间的排斥力设计基于二元规则的分类结构。这种方法与特征空间中每个维度的潜在辨别力相结合,以增加泛化潜力。为了解决这个问题,首先提出了新提出的软聚类算法的多元变体及其数学基础。接下来,使用所提出的聚类算法中的多元隶属度值来计算每个单独特征的判别力,以在每个规则中获得最准确的触发度。该方法的主要优点是处理不平衡的数据集,可产生出众的真实正值,同时将误报率保持在足够低的水平,从而避免了对包含大量训练样本的类标签的自然偏见。为了验证所提出的方法,我们对我们的团队收集的公开数据集和真实临床数据集进行了一系列数值实验。仿真结果证明了这项研究的主要目标的实现。 (C)2017 Elsevier B.V.保留所有权利。

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