VCI predictors: Voting on classifications from imputed learning sets

Xiaoyuan Su, T. Khoshgoftaar, Xingquan Zhu
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引用次数: 1

Abstract

We propose VCI (voting on classifications from imputed learning sets) predictors, which generate multiple incomplete learning sets from a complete dataset by randomly deleting values with a small MCAR (missing completely at random) missing ratio, and then apply an imputation technique to fill in the missing values before giving the imputed data to a machine learner. The final prediction of a class is the result of voting on the classifications from the imputed learning sets. Our empirical results show that VCI predictors significantly improve the classification performance on complete data, and perform better than Bagging predictors on binary class data.
VCI预测器:对来自输入学习集的分类进行投票
我们提出了VCI(对来自输入学习集的分类进行投票)预测器,该预测器通过随机删除具有小MCAR(随机完全缺失)缺失率的值,从完整数据集中生成多个不完整学习集,然后在将输入数据提供给机器学习器之前应用imputation技术来填充缺失值。类的最终预测是对来自输入学习集的分类进行投票的结果。我们的实证结果表明,VCI预测器在完全类数据上显著提高了分类性能,并且在二分类数据上优于Bagging预测器。
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