Constructing Accurate Fuzzy Classification Systems: A New Approach Using Weighted Fuzzy Rules

S. M. Fakhrahmad, M. Z. Jahromi
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引用次数: 12

Abstract

Different approaches to design fuzzy rule-based classification systems can be grouped into two main categories: descriptive and accurate. In the descriptive category, the emphasis is on the interpretability of the resulting classifier. The classifier is usually represented by a set of short fuzzy rules (i.e., with a few number of antecedent conditions) that make it a suitable tool for knowledge representation. In the accurate category, the generalization ability of the classifier is the main target in the design process and no attempt is made to use understandable fuzzy rules in constructing the rule base. In this paper, we propose a simple and efficient method to construct an accurate fuzzy classification system. We use rule-weight as a simple mechanism to tune the classifier and propose a new method of rule-weight specification for this purpose. Through computer simulations on some data sets from UCI repository, we show that the proposed scheme achieves better prediction accuracy compared with other fuzzy and non- fuzzy rule-based classification systems proposed in the past.
利用加权模糊规则构建精确模糊分类系统的新方法
设计基于模糊规则的分类系统的不同方法可以分为两大类:描述性和准确性。在描述性分类中,重点是结果分类器的可解释性。分类器通常由一组简短的模糊规则(即,带有少量先决条件)表示,这使其成为知识表示的合适工具。在精确分类中,分类器的泛化能力是设计过程中的主要目标,没有尝试使用可理解的模糊规则来构建规则库。本文提出了一种简单有效的方法来构建精确的模糊分类系统。我们使用规则权重作为一种简单的机制来调优分类器,并为此提出了一种新的规则权重规范方法。通过对UCI知识库中部分数据集的计算机模拟,对比以往提出的基于模糊和非模糊规则的分类系统,本文提出的方案具有更好的预测精度。
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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