Transforming fuzzy graphs into linguistic variables

Marc Osswald, Marcel Wehrle, Edy Portmann, Alexander Denzler
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引用次数: 0

Abstract

Fuzzy graphs (FG) are capable of showing dependencies and relationships between each other to a certain degree. Often, these relationships are described by numbers, which impedes interpretability for humans because they communicate using natural language. This paper seeks to turn the mathematical output of an FG into natural language sentences by applying Restriction-Centered Theory (RCT) to enhance the possibilities of knowledge transfer for humans via an FG. The proposed framework connects FGs and the RCT to produce not only verbalized dependencies but also statements about the dependencies of FGs. As a proof of concept, a use case is introduced, where Swiss Airline's connecting passenger flows are analyzed. The statements of the framework's output are verified by an expert at the company that owns the data.
将模糊图转换为语言变量
模糊图(FG)能够在一定程度上显示出彼此之间的依赖和关系。通常,这些关系是用数字来描述的,这阻碍了人类的可解释性,因为它们使用自然语言进行交流。本文试图通过应用限制中心理论(RCT)将人工智能的数学输出转化为自然语言句子,以增强人类通过人工智能进行知识转移的可能性。所提出的框架将fg和RCT连接起来,不仅可以生成语言化的依赖关系,还可以生成关于fg依赖关系的声明。作为概念验证,介绍了一个用例,其中分析了瑞士航空公司的连接客流。框架输出的语句由拥有数据的公司的专家进行验证。
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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