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Characteristic Relations for Incomplete Data: A Generalization of the Indiscernibility Relation

机译:不完整数据的特征关系:难以辨证关系的概括

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This paper shows that attribute-value pair blocks, used for many years in rule induction, may be used as well for computing indis-cernibility relations for completely specified decision tables. Much more importantly, for incompletely specified decision tables, i.e., for data with missing attribute values, the same idea of attribute-value pair blocks is a convenient tool to compute characteristic sets, a generalization of equivalence classes of the indiscernibility relation, and also characteristic relations, a generalization of the indiscernibility relation. For incompletely specified decision tables there are three different ways lower and upper approximations may be defined: singleton, subset and concept. Finally, it is shown that, for a given incomplete data set, the set of all characteristic relations for the set of all congruent decision tables is a lattice.
机译:本文可以使用该文件在规则诱导中使用多年的属性值对块,也可以用于计算完全指定的决策表的Indis-Cernibility关系。更重要的是,对于未完全指定的决策表,即对于具有缺少属性值的数据,相同的属性值对块的想法是计算特征集的方便工具,难以辨证关系的等同类的概念,以及特征关系,令人轻松关系的概括。对于未完全指定的决策表,可以定义三种不同的方式,可以定义下近似和上近似:单例,子集和概念。最后,表明,对于给定的不完整数据集,所有全体决策表的集合的所有特征关系集是晶格。

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