Novel Attribute Reduction on Decision Rules*

Can Wang, Qiang Lin, Chunming Xu, Lin Li, Xiaoyong Fan
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引用次数: 0

Abstract

From the perspective of formal concept analysis, the concepts of a formal context generated become larger in number with growing data. Attribute reduction based on decision formal context is to find out minimum subsets of attributes while maintaining the ability of classification, decision rules simplified as well which will make decision making much easier. This paper firstly generates decision rules, divides decision rules into strong rules and weak rules, puts forward judging theorems of non-redundant rules and rule reduction; secondly, proposes an approach of rule reduction by categories of attributes; in the end, discusses the time complexity. Comparing with other algorithms on runtime and ability of classification, experimental analysis shows that our method approves feasibility and accuracy. In the end, it draws a conclusion and discusses open issues.
决策规则的新型属性约简*
从形式概念分析的角度来看,随着数据的增长,生成的形式语境的概念数量也越来越多。基于决策形式上下文的属性约简是在保持分类能力的同时找出属性的最小子集,简化了决策规则,使决策更加容易。本文首先生成决策规则,将决策规则分为强规则和弱规则,提出了非冗余规则的判断定理和规则约简定理;其次,提出了一种基于属性类别的规则约简方法;最后,讨论了时间复杂度问题。实验分析表明,该方法在运行时间和分类能力上与其他算法进行了比较,证明了该方法的可行性和准确性。最后,得出结论,并对有待解决的问题进行讨论。
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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