Employing an Enhanced Interval Approach to encode words into Linear General Type-2 fuzzy sets for Computing With Words applications

A. Bilgin, H. Hagras, Daniyal M. Al-Ghazzawi, A. Malibari, M. J. Alhaddad
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引用次数: 5

Abstract

In 1996, Zadeh coined Computing With Words (CWWs) to be a methodology in which words are used instead of numbers for computing and reasoning. One of the main challenges which faced the CWWs paradigm has been modelling words adequately. Mendel has pointed out that the CWWs paradigm should employ type-2 fuzzy logic to model words. This paper proposes employing an Enhanced Interval Approach (EIA) to create Linear General Type-2 (LGT2) fuzzy sets from Interval Type-2 (IT2) fuzzy sets to encode words for CWWs applications. We have performed experiments on 18 words belonging to 3 different linguistic variables (having 6 linguistic terms each). Interval data has been collected from 17 subjects and 18 linguistic terms have been modeled with IT2 fuzzy sets using EIA. The proposed conversion approach uses several key points within the parameters of IT2 fuzzy sets to redesign the linguistic variable using LGT2 fuzzy sets. Both IT2 and LGT2 fuzzy sets have been evaluated within a CWWs Framework, which aims to mimic the ability of humans to communicate and manipulate perceptions via words. The comparison results show that LGT2 fuzzy sets can be better than IT2 fuzzy sets in mimicking human reasoning as well as learning and adaptation since the progressive Root Mean Squared Error (RMSE) and Mean Absolute Percentage Error (MAPE) values for LGT2 based CWWs Framework converge faster and are lower than those for IT2 based CWWs Framework.
采用增强区间方法将词编码为线性一般2型模糊集,用于词计算应用
1996年,Zadeh创造了用单词计算(CWWs),这是一种用单词代替数字进行计算和推理的方法。CWWs范式面临的主要挑战之一是对单词进行充分的建模。孟德尔指出CWWs范式应该采用2型模糊逻辑对词进行建模。本文提出采用增强区间方法(EIA)从区间2型(IT2)模糊集创建线性一般2型(LGT2)模糊集,对CWWs应用中的单词进行编码。我们对属于3个不同语言变量(每个变量有6个语言术语)的18个单词进行了实验。本文收集了17个研究对象的区间数据,并利用EIA对18个语言术语进行了IT2模糊集建模。该转换方法利用IT2模糊集参数中的几个关键点,利用LGT2模糊集重新设计语言变量。IT2和LGT2模糊集都在CWWs框架内进行了评估,该框架旨在模仿人类通过文字交流和操纵感知的能力。比较结果表明,基于LGT2的CWWs框架的渐进均方根误差(RMSE)和平均绝对百分比误差(MAPE)值收敛速度快,且低于基于IT2的CWWs框架,因此LGT2模糊集在模拟人类推理、学习和适应方面优于IT2模糊集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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