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Knowledge Reduction Based on Divide and Conquer Method in Rough Set Theory

机译:粗糙集理论中基于分而治之方法的知识约简

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The divide and conquer method is a typical granular computing method using multiple levels of abstraction and granulations. So far, although some achievements based on divided and conquer method in the rough set theory have been acquired, the systematic methods for knowledge reduction based on divide and conquer method are still absent. In this paper, the knowledge reduction approaches based on divide and conquer method, under equivalence relation and under tolerance relation, are presented, respectively. After that, a systematic approach, named as the abstract process for knowledge reduction based on divide and conquer method in rough set theory, is proposed. Based on the presented approach, two algorithms for knowledge reduction, including an algorithm for attribute reduction and an algorithm for attribute value reduction, are presented. Some experimental evaluations are done to test the methods on uci data sets and KDDCUP99 data sets. The experimental results illustrate that the proposed approaches are efficient to process large data sets with good recognition rate, compared with KNN, SVM, C4.5, Naive Bayes, and CART.
机译:分治法是一种典型的使用多个抽象和粒度层次的粒度计算方法。迄今为止,尽管在粗糙集理论中获得了基于分治法的一些成就,但仍缺乏基于分治法的知识约简的系统方法。本文分别提出了等价关系和容差关系下基于分而治之的知识约简方法。之后,提出了一种基于粗糙集理论的基于分治法的知识约简抽象过程的系统方法。基于提出的方法,提出了两种知识约简算法,包括属性约简算法和属性值约简算法。完成了一些实验评估,以测试uci数据集和KDDCUP99数据集上的方法。实验结果表明,与KNN,SVM,C4.5,朴素贝叶斯和CART相比,所提方法有效地处理了具有良好识别率的大数据集。

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