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A valued tolerance approach to missing attribute values in data mining

机译:数据挖掘中缺少属性值的有价值的容忍方法

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One of the newest approaches to missing attribute values in data sets is based on a valued tolerance relation. The valued tolerance relation method of handling missing attribute values was not yet experimentally compared with other methods. The main objective of this paper was to compare the quality of two methods handling missing attribute values, one of them was the valued tolerance method, the other method was the MLEM2 approach, using the same interpretation of missing attribute values but a different approach to computing approximations and rule induction. Both methods were compared using not only an error rate, a result of ten-fold cross validation, but also complexity of induced rule sets. Our conclusion is that neither of these two methods is better in terms of the error rate. However, the MLEM2 approach produces, in most cases, less complex rule sets than the valued tolerance method.
机译:数据集中缺少属性值的最新方法之一是基于有价值的公差关系。还没有与其他方法在实验上比较处理缺失属性值的有价值公差关系方法。本文的主要目的是比较两种处理缺失属性值的方法的质量,其中一种是有值公差方法,另一种方法是MLEM2方法,使用相同的解释属性值,但使用不同的方法进行计算近似和规则归纳。不仅使用错误率(十倍交叉验证的结果),还使用诱导规则集的复杂性来比较这两种方法。我们的结论是,这两种方法的错误率都没有更好。但是,在大多数情况下,MLEM2方法生成的规则集比有价值的公差方法复杂得多。

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