基于粗糙集的动态约简计算分析

Carine Pierrette Mukamakuza, Jia-yang Wang, Li Li
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引用次数: 1

摘要

本文对信息数据的约简和动态约简进行了分析。首先阐述了信息系统的约简方法,假设信息是二维或矩阵形式。构造数据的可辨矩阵,然后从该矩阵中找到所有的约简。从所有还原剂中选择最佳(最优)还原剂;这是通过使用Java编程和Weka工具考虑频率最高的一个实现的。介绍了三种动态约简计算方法:面向对象粗糙集模型中的新型约简即动态约简、基于约简轨迹计算的动态约简计算方法和利用级联哈希生成f -动态约简。通过对这三种方法的分析,在每个算法中增加一个步骤,即从每个算法第一步计算的所有约简中得到最优约简的方法,从而对这三种方法进行改进。因此,动态缩减是从最优缩减中生成的,而不是从所有缩减中生成的。因此,通过生成改进的动态约简,实现了对这三种动态约简计算方法的改进。
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Dynamic reducts computation analysis based on rough sets
In this paper analysis of reduction and dynamic reducts of an information data is presented. The method of reduction in information system is explained first, the information was assumed to be in a two-dimension or in a matrix form. A discernibility matrix of the data was constructed, and then all reducts from that matrix were found. The best (optimum) reduct was selected from all reducts; that was achieved by considering the one with the highest level of frequency by using Java programming and Weka tool. Three methods of dynamic reducts computation are introduced namely: The new type of Reduct in the object-oriented rough set model which is called dynamic reduct, the method of dynamic reduct calculation based on calculating of reduct traces and the generation F-dynamic reduct using cascading Hashes. The analysis of those three methods led to their improvement through adding one step in each algorithm which was the method of getting the optimum reducts from all reducts calculated in first steps of each algorithm. As result, the dynamic reducts were generated from optimum reducts and not from all reducts. Thus by generating an improved dynamic reducts, improvement of those three methods for calculation of dynamic reducts is achieved.
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