基于量词模糊分类系统的语言规则集提取

K. Rasmani, J. Garibaldi, Qiang Shen, Ian O. Ellis
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引用次数: 1

摘要

与非模糊分类系统相比,语言规则集的使用被认为是模糊分类系统可以提供的最大优势之一。本文提出使用模糊阈值和模糊量词从数据驱动的基于模糊子方法的分类系统生成语言规则集。所提出的技术不仅提供了设计的简单性和生成的规则集的可理解性,而且提供了实现的实用性。此外,模糊量词的使用使用户更容易理解分类过程以及如何进行分类。使用医学数据集证明了所提出方法的有效性,该数据集提供的证据表明,所提出的系统生成的规则与临床医生创建的专家规则一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linguistic rulesets extracted from a quantifier-based fuzzy classification system
The use of linguistic rulesets is considered one of the greatest advantages that fuzzy classification systems can offer compared to non-fuzzy classification systems. This paper proposes the use of fuzzy thresholds and fuzzy quantifiers for generating linguistic rulesets from a data-driven fuzzy subsethood-based classification system. The proposed technique offers not only simplicity in the design and comprehensibility of the generated rulesets but also practicality in the implementation. Additionally, the use of fuzzy quantifiers makes it easier for the user to understand the classification process and how such classifications were reached. The effectiveness of the proposed method is demonstrated using a medical dataset which provides evidence that rules generated by the proposed system are consistent with the expert-rules created by clinicians.
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