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Symbolic Representation for Rough Set Attribute Reduction Using Ordered Binary Decision Diagrams

机译:使用有序二元决策图的粗糙集属性约简的符号表示

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摘要

The theory of rough set is the current research focus for knowledge discovery, attribute reduction is one of crucial problem in rough set theory. Most existing attribute reduction algorithms are based on algebra and information representations, discernibility matrix is a common knowledge representation for attribute reduction. As problem solving under different knowledge representations corresponding to different difficulties, by changing the method of knowledge representation, a novel knowledge representation to represent the discernibility matrix using ordered binary decision diagrams (OBDD) is proposed in this paper, the procedures to translate the discernibility matrix model to the conversion OBDD model is presented, experiment is carried to compare the storage space of discernibility matrix with that of OBDD, results show that OBDD model has better storage performance and improve the attribute reduction for those information systems with more objects and attributes, it provide the foundation for seeking new efficient algorithm of attribute reduction.
机译:粗糙集理论是当前知识发现的研究重点,属性约简是粗糙集理论中的关键问题之一。现有的大多数属性约简算法都是基于代数和信息表示的,可分辨矩阵是属性约简的常识表示。针对不同困难下不同知识表示的问题解决方法,通过改变知识表示的方法,提出了一种新的以有序二元决策图(OBDD)表示可分辨矩阵的知识表示方法,并通过该程序进行了区分。提出了将模型转换为转换后的OBDD模型的方法,并通过实验比较了可分辨矩阵和OBDD的存储空间,结果表明OBDD模型具有更好的存储性能,并改善了对象和属性较多的信息系统的属性约简,为寻求新的有效的属性约简算法提供基础。

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