Missing Data Imputation Based on Grey System Theory

نویسندگان

  • Guoming Sang
  • Kai Shi
  • Zhi Liu
  • Lijun Gao
چکیده

This paper proposed a new weighted KNN data filling algorithm based on grey correlation analysis (GBWKNN) by researching the nearest neighbor of missing data filling method. It is aimed at that missing data is not sensitive to noise data and combined with grey system theory and the advantage of the K nearest neighbor algorithm. The experimental results on six UCI data sets showed that its filling accuracy is better than the traditional method of K nearest neighbor and filling algorithm presented by Huang and Lee.

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تاریخ انتشار 2014