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Rough set and CART approaches to mining incomplete data

机译:粗糙集和CART方法来挖掘不完整数据

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Many data sets are incomplete, i.e., are affected by missing attribute values. In this paper, we report results of experiments on two approaches to missing attribute values. The first one is based on rough set theory and rule induction, the second one is the CART method that uses surrogate splits for handling missing attribute values and that generates decision trees. As follows from our experiments, both approaches are comparable in terms of an error rate. Thus, for a specific data set the best method of handling missing attribute values should be selected individually.
机译:许多数据集不完整,即受到缺少属性值的影响。在本文中,我们报告了两种缺少属性值的方法的实验结果。第一个是基于粗糙集理论和规则归纳的,第二个是CART方法,该方法使用代理拆分来处理缺失的属性值并生成决策树。从我们的实验中可以看出,两种方法的错误率都是可比的。因此,对于特定的数据集,应单独选择处理缺少的属性值的最佳方法。

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