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A new method for Decision tree based Discernibility matrix and Degree of consistent dependence

机译:基于决策树的辨识矩阵的一种新方法和一致依赖的程度

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Rough set theory is a popular mathematical knowledge to resolve problems which are vagueness and uncertainly. And it has been used of solving the redundancy of attribute and data. Decision tree has been widely used in data mining techniques, because it is efficient, fast and easy to be understood in terms of data classification. There are many approaches have been used to generate a decision tree. In this paper, a novel and effective algorithm is introduced for decision tree. This algorithm is based on the core of discernibility matrix on rough set theory and the degree of consistent dependence. This algorithm is to improve the decision tree on node selection. This approach reduces the time complexity of the decision tree production and space complexity compared with ID3. In the end of the article, there is an example of the algorithm can exhibit superiority.
机译:粗糙集理论是一种流行的数学知识,用于解决模糊和不确定的问题。它已被使用解决属性和数据的冗余。决策树已广泛用于数据挖掘技术,因为在数据分类方面是有效,快速且易于理解的。已经使用许多方法来生成决策树。本文介绍了一种新颖且有效的算法,用于决策树。该算法基于粗糙集理论上的可辨能矩阵的核心和一致依赖性的程度。该算法是改进节点选择的决策树。与ID3相比,这种方法减少了决策树生产和空间复杂性的时间复杂性。在本文的末尾,存在算法的示例可以表现出优势。

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