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Enhanced Interval Approach for encoding words into interval type-2 fuzzy sets and convergence of the word FOUs

机译:增强间隔法将单词编码为间隔2型模糊集和单词FOU的收敛

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The Interval Approach (IA) [4] is a method for synthesizing an interval type-2 fuzzy set (IT2 FS) model for a word from data that are collected from a group of subjects. A key assumption made by the IA is: each person's data interval is random and uniformly distributed. This means, of course, that the IT2 FS model for the word is random. Consequently, one can question whether or not the IT2 FS model for the word converges in a stochastic sense. This paper focuses on this question. As a part of our study, we have had to modify some steps of the IA, the resulting being an Enhanced IA (EIA). The paper shows by means of some simulations, that the IT2 FS word models that are obtained from the EIA are converging in a mean-square sense. This provides substantial credence for using the EIA to obtain T2 FS word models.
机译:区间方法(IA)[4]是一种根据从一组主题收集的数据为单词合成区间2型模糊集(IT2 FS)模型的方法。保险业监督作出的一个关键假设是:每个人的数据间隔是随机的,并且分布均匀。当然,这意味着该单词的IT2 FS模型是随机的。因此,人们可以质疑该单词的IT2 FS模型是否在随机意义上收敛。本文着重于这个问题。作为研究的一部分,我们不得不修改IA的某些步骤,从而导致增强的IA(EIA)。本文通过一些模拟显示,从EIA获得的IT2 FS单词模型正在以均方意义收敛。这为使用EIA获得T2 FS单词模型提供了实质性的保证。

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