利用模糊集和形式概念分析建立基于案例分类器的分类规则

J. Tadrat, V. Boonjing, P. Pattaraintakorn
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引用次数: 5

摘要

本文的研究重点是在基于案例的分类器系统中构建更好的知识库。我们的知识库结构是基于概念格的,其中规则是由概念格的子概念-超概念关系构建的。由于晶格只能从具有二进制属性的输入构造,因此描述性和数值属性必须转换为二进制属性。本文利用模糊集理论提出了数值属性到描述属性的转换。我们在基准数据集Car和Iris上进行了实验,以确定使用的规则数量和分类精度方面的性能。结果表明,准确率的变化趋势与学习输入的大小成正比。与训练数据的规模相比,使用的规则数量相对较少。我们的基于案例的分类器在实践中产生了非常好的结果,并且可以比传统的分类器更准确地分类新问题。
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Building classification rules for case-based classifier using fuzzy sets and formal concept analysis
The focus of this paper is a construction of better knowledge base in case-based classifier system. Our knowledge base structure is based on concept lattice where rules are built from its subconcept-superconcept relation. Since the lattice can only be constructed from inputs with binary attributes, descriptive and numeric attributes must be transformed to binary attributes. In this paper, we propose the transformation of numeric attributes to descriptive attributes using fuzzy set theory. We experiment on benchmark data sets, Car and Iris, to determine the performance in term of number of rules used and classification precision. The results show that trend of accuracy is proportional to the size of learning inputs. The number of rules used is relatively small compared with size of training data. Our case-based classifier produces very promising results in practice and can classify the new problem more accurate than traditional classifiers.
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