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A Parallel Attribute Reduction Method Based on Classification

机译:基于分类的并行属性还原方法

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Parallel processing as a method to improve computer performance has become a development trend. Based on rough set theory and divide-and-conquer idea of knowledge reduction, this paper proposes a classification method that supports parallel attribute reduction processing, the method makes the relative positive domain which needs to be calculated repeatedly independent, and the independent relative positive domain calculation could be processed in parallel; thus, attribute reduction could be handled in parallel based on this classification method. Finally, the proposed algorithm and the traditional algorithm are analyzed and compared by experiments, and the results show that the proposed method in this paper has more advantages in time efficiency, which proves that the method could improve the processing efficiency of attribute reduction and makes it more suitable for massive data sets.
机译:并行处理作为提高计算机性能的方法已成为发展趋势。 基于粗糙集理论和征求知识减少的划分,本文提出了一种支持并行属性减少处理的分类方法,该方法使得需要重复独立地计算的相对正极域,以及独立的相对正域 计算可以并行处理; 因此,可以基于该分类方法并行处理属性还原。 最后,通过实验分析并比较了所提出的算法和传统算法,结果表明,本文中的该方法在时间效率方面具有更多优势,这证明了该方法可以提高属性减少的处理效率并使其变化 更适合大规模数据集。

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