Correlation Between Granular Entropy and Classification Accuracy in Discretization
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TP18

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    Abstract:

    This paper discusses the correlation between the number of cut points, granular entropy and classification accuracy in discretization. It is proven that granular entropy decreases if the number of cut points increases. A hybrid discretization algorithm is proposed to provide discretization schemes for studying these measures. The simulation experiments show that the absolute value of the correlation coefficient between number of cut points and classification accuracy is quite large, as it for granular entropy and classification accuracy. Sometimes, the correlation between the granular entropy and classification accuracy is smaller than that between the cut points and classification accuracy.

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王立宏,孙立民,孟佳娜.数值离散化中粒度熵与分类精度的相关性[J].重庆大学学报,2008,31(1):57~

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History
  • Received:September 12,2007
  • Revised:September 12,2007
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