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Dual Rough Approximations in Information Tables with Missing Values

机译:具有缺失值的信息表中的双重粗略近似值

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A method of possible equivalence classes has been developed under information tables with missing values. To deal with imprecision of rough approximations that comes from missing values, the concepts of certainty and possibility are used. When an information table contains missing values, two rough approximations, certain and possible ones, are obtained. The actual rough approximation lies between the certain and possible rough approximations. The method gives the same results as a method of possible worlds. This justifies the method of possible equivalence classes. Furthermore, the method is free from the restriction that missing values may occur to only some specified attributes. Hence, we can use the method of possible equivalence classes to obtain rough approximations between arbitrary sets of attributes having missing values.
机译:在具有缺失值的信息表下开发了可能的等价类的方法。要处理来自缺失值的粗略近似的不精确,所以使用确定性和可能性的概念。当信息表包含缺失值时,获得两个粗略近似,某些粗略近似值。实际粗略近似位于某些和可能的粗略近似之间。该方法将与可能世界的方法相同的结果。这证明了可能的等价类别的方法。此外,该方法没有限制,即仅可能发生一些指定的属性可能发生缺失值。因此,我们可以使用可能的等价类的方法来获得具有缺失值的任意属性集之间的粗略近似。

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