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A Discretization Algorithm That Keeps Positive Regions of All the Decision Classes

机译:一种可离散化算法,可保持所有决策类的正区域

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Most of the existing discretization methods such as k-interval discretization, equal width and equal frequency methods do not take the dependencies of decision attributes on condition attributes into account. In this paper, we propose a discretization algorithm that can keep the dependencies of the decision attribute on condition attributes, or keep the positive regions of the partition of the decision attribute. In the course of inducing classification rules from a data set, keeping these dependencies can achieve getting the set of the least condition attributes and the highest classification precision.
机译:大多数现有的离散化方法,如k间隔离散化,等于宽度和等于频率方法,不考虑条件属性的决策属性的依赖关系。在本文中,我们提出了一种离散化算法,可以将决策属性的依赖性保持在条件属性上,或者保留决策属性的分区的正区域。在从数据集中引导分类规则的过程中,保持这些依赖关系可以实现最小条件属性的集合和最高分类精度。

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