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Incorporating an EM-approach for handling missing attribute-values in decision tree induction

机译:在决策树归纳中结合使用EM方法来处理缺失的属性值

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Data with missing attribute-values are quite common in many classification problems. In this paper, we incorporate an expectation-maximization (EM) inspired approach for filling up missing values to decision tree learning with the objective of improving classification accuracy. Here, each missing attribute-value is iteratively filled using a predictor constructed from the known values and predicted values of the missing attribute-values from the previous iteration. We show that our approach significantly outperforms some standard machine learning methods for handling missing values in classification tasks.
机译:缺少属性值的数据在许多分类问题中非常普遍。在本文中,我们采用了期望最大化(EM)启发的方法来填充决策树学习中的缺失值,目的是提高分类的准确性。在此,使用从已知值构造的预测值和来自先前迭代的缺失属性值的预测值迭代地填充每个缺失属性值。我们表明,我们的方法在处理分类任务中的缺失值方面明显优于某些标准的机器学习方法。

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