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Encoding Words Into Normal Interval Type-2 Fuzzy Sets: HM Approach

机译:将单词编码为正常间隔2型模糊集:HM方法

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This paper focuses on an approach, called the HM Approach (HMA), to determine (for the first time) a normal interval type-2 fuzzy set model for a word that uses interval data about a word that are collected either from a group of subjects or from one subject. The HMA has two parts: 1) Data part, which is the same as the Data Part of the enhanced interval approach (EIA) [44], and 2) Fuzzy Set Part, which is very different from the second part of the EIA, the most notable difference being that in the HMA, the common overlap of subject data intervals is interpreted to indicate agreement by all of the subjects for that overlap, and therefore, a membership grade of 1 is assigned to the common overlap. Another difference between the HMA and EIA is the way in which data intervals are collectively classified into either a Left-shoulder, Interior, or Right-shoulder footprint of uncertainty. The HMA does this more simply than does the EIA, and requires fewer probability assumptions about the intervals than does the EIA.
机译:本文重点介绍一种称为HM方法(HMA)的方法,该方法(首次)确定单词的正常间隔2型模糊集模型,该模型使用有关单词间隔的数据,该间隔数据是从一组主题或一个主题。 HMA有两个部分:1)数据部分,与增强间隔法(EIA)[44]的数据部分相同,以及2)模糊集部分,与EIA的第二部分有很大不同,最显着的区别在于,在HMA中,主题数据间隔的公共重叠被解释为表示所有对象都对该重叠表示一致,因此,将会员等级1分配给该公共重叠。 HMA和EIA之间的另一个区别是将数据间隔归为不确定性的左肩,内部或右肩足迹的方式。与EIA相比,HMA更简单地执行此操作,并且与EIA相比,对间隔的概率假设更少。

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