一种构造决策树的属性空间划分优化方法

Dexian Zhang, Weidong Yang, Junwei Yu, Feng Wang
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引用次数: 0

摘要

属性空间的合理划分是决策树构造和规则提取中的核心问题,直接影响决策树构造的有效性。本文提出了一种新的属性空间划分的二维分析方法,不仅降低了分析复杂度,而且提高了属性划分的效率。提出了一种优化属性空间划分的新模型。该模型能够有效地度量属性空间边界的合理性,满足属性空间分离边界距离最大且均匀的条件。在此基础上,提出了非区分区域的概念,提出了区分非区分区域与区域碰撞的方法以及属性空间分离的方法。典型算例证明了该方法在属性划分和决策树构造方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new approach of the division optimization of attribute spaces for the decision tree construction
The reasonable division of attribute spaces is a core problem in the decision tree construction and the rule extraction, which directly influences the effectiveness of the construction of decision trees. In this paper, a new two-dimension analysis method for the attribute space division is proposed, which not only reduces the analysis complexity, but also improves the efficiency of attribute division. And a new model for optimizing the division of attribute spaces is proposed. The new model can effectively measure the reasonability of the boundary of attribute spaces and satisfy the condition with maximum and uniformity of the boundary distance of the separation of attribute spaces. Furthermore, this paper gives the concept of non-discriminate regions, and presents the method for distinguishing the non-discriminate regions and the region collision and the approach of the separation of attribute spaces. The typical computing examples prove the validity of our approach in attribute division and decision tree construction.
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