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Coping with missing attribute values based on closest fit in preterm birth data: a rough set approach

机译:基于最接近早产数据的属性值的缺失应对:一种粗糙集方法

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摘要

Data mining is frequently applied to data sets with missing attribute values. A new approach to missing attribute values, called closest fit, is introduced in this paper. In this approach, for a given case (example) with a missing attribute value we search for another case that is as similar as possible to the given case. Cases can be considered as vectors of attribute values. The search is for the case that has as many as possible identical attribute values for symbolic attributes, or as the smallest possible value differences for numerical attributes. There are two possible ways to conduct a search: within the same class(concept) as the case with the missing attribute values, or for the entire set of all cases.
机译:数据挖掘通常应用于缺少属性值的数据集。本文介绍了一种缺失属性值的新方法,称为最接近拟合。在这种方法中,对于缺少属性值的给定案例(示例),我们搜索与该给定案例尽可能相似的另一个案例。可以将案例视为属性值的向量。搜索是针对符号属性具有尽可能多的相同属性值,或数值属性具有尽可能小的值差的情况。有两种可能的搜索方式:与缺少属性值的案例属于同一类(概念),或者针对所有案例的整个集合。

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