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Distinguishability of interval type-2 fuzzy sets data by analyzing upper and lower membership functions

机译:通过分析上下隶属度函数来区分区间2型模糊集数据

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In this paper, we deal with the problem of classification of interval type-2 fuzzy sets through evaluating their distinguishability. To this end, we exploit a general matching algorithm to compute their similarity measure. The algorithm is based on the aggregation of two core similarity measures applied independently on the upper and lower membership functions of the given pair of interval type-2 fuzzy sets that are to be compared. Based on the proposed matching procedure, we develop an experimental methodology for evaluating the distinguishability of collections of interval type-2 fuzzy sets. Experimental results on evaluating the proposed methodology are carried out in the context of classification by considering interval type-2 fuzzy sets as patterns of suitable classification problem instances. We show that considering only the upper and lower membership functions of interval type-2 fuzzy sets is sufficient to (i) accurately discriminate between them and (ii) judge and quantify their distinguishability.
机译:本文通过评估区间类型2模糊集的可分辨性来解决它们的分类问题。为此,我们利用通用匹配算法来计算它们的相似性度量。该算法基于两个核心相似性度量的聚合,这些度量分别应用在要比较的给定间隔类型2模糊集对的上下隶属函数上。基于提出的匹配程序,我们开发了一种评估区间2型模糊集集合的可区分性的实验方法。通过将区间2型模糊集视为合适的分类问题实例的模式,在分类的背景下评估了所提出方法的实验结果。我们表明,仅考虑区间类型2模糊集的上下隶属函数就足以(i)准确区分它们,以及(ii)判断和量化其可区分性。

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