引入概念的属性约简算法研究

Can Wang, D. He, Lijuan Wang, H. Hou, Ruijie Liu
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引用次数: 1

摘要

随着数据表大小的增长,生成的概念数量也越来越多。概念格属性约简的目的是在保证范围集不变的情况下,找出属性的最小子集,使概念格所表示的知识更简单,决策问题也更简化。引入了引入子的定义,引入子是某属性的最小闭包集;首次从引入概念的角度对属性进行约简:如果一个引入概念对某一属性进行约简,则该属性为核心;否则,这个属性是不必要的或相对必要的;证明了如果引入某属性的概念是非简并的(简并的),则包含该属性的路径上的概念同时是非简并的(简并的)。然后,本文提出了一种属性约简算法,并对其时间复杂度进行了讨论。实验结果表明,本文提出的算法具有良好的运行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on algorithm of attribute reduction based on concept with introducer
As the size of data table grows, the concepts generated become larger in number. Making sure the set of extent remaining unchanged, the purpose of attribute reduction of concept lattice is to find out minimum subsets of attributes and make knowledge presented by concept lattice simpler, decision problem simplified as well. This paper introduced the definition of introducer which was minimum closure set of certain attribute; reduced attributes from the perspective of concept with introducer for the first time: if a concept with introducer with regard to certain attribute was degenerate then this attribute was core; otherwise this attribute was unnecessary or relative necessary; proved that if a concept with introducer of certain attribute was non-degenerate(degenerate), then the concepts on the path containing this attribute were non-degenerate(degenerate) simultaneously. Afterwards, this paper put forward an algorithm of attribute reduction and discussed the time complexity. Experimental results showed that algorithm proposed in this paper achieved excellent runtime.
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