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Attribute Reduction Algorithm Research Based on Golden Section and Back Elimination

机译:基于黄金分割和消除的属性约简算法研究

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Data mining and analysis algorithms are known to degrade in performance when facing with many redundant or irrelevant features. Attribute reduction is one of the primary problems of Rough Set theory, the goal of which is to delete irrelevant or unimportant information. Once all attribute reducts are got, the reasoning capability with multi attributes absent can behave well. Thus how to get all attribute reducts is worth a problem to research. In this paper, an algorithm based on golden section and back elimination is presented for getting all attribute reducts of decision system. Experiment results show the validity of our proposed algorithm
机译:当面对许多冗余或不相关的功能时,数据挖掘和分析算法会降低性能。属性约简是粗糙集理论的主要问题之一,其目标是删除不相关或不重要的信息。一旦获得所有属性约简,缺少多属性的推理能力就可以很好地发挥作用。因此,如何获得所有属性约简是值得研究的问题。提出了一种基于黄金分割和反向消除的算法,用于获取决策系统的所有属性约简。实验结果表明了该算法的有效性。

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