Elastic Multi-stage Decision Rules for Infrequent Class

Soma Datta, S. Mengel
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引用次数: 3

Abstract

Typically, decision trees are used to represent knowledge by rule generation. To have a better understanding of the rules, it is sometimes necessary to minimize the number of nodes by minimizing the depth of the tree. This study optimizes the depth of the tree by minimizing the number of nodes. Rules that are generated using either decision trees or class association mining are from the major class of the dataset. To enable rules to be created for the infrequent class, this study uses an elastic method, Elastic Multi-Stage Decision Methodology (EMSDM), to create rules for the infrequent group. EMSDM is elastic in that it expands and contracts to accommodate the characteristics of the dataset. In addition, the data analysis occurs in stages: clustering, minimizing the depth of the decision tree, and association mining, to increase the ability of EMSDM to find infrequent class rules. EMSDM shows promise to find infrequent class rules with increased accuracy.
非频繁类的弹性多阶段决策规则
通常,决策树通过规则生成来表示知识。为了更好地理解规则,有时需要通过最小化树的深度来最小化节点的数量。本研究通过最小化节点数来优化树的深度。使用决策树或类关联挖掘生成的规则来自数据集的主要类。为了能够为不频繁的类别创建规则,本研究使用了一种弹性方法,即弹性多阶段决策方法(EMSDM)来为不频繁的类别创建规则。EMSDM是弹性的,因为它可以扩展和收缩以适应数据集的特征。此外,数据分析分阶段进行:聚类、最小化决策树的深度和关联挖掘,以提高EMSDM发现不常见类规则的能力。EMSDM有望以更高的准确性找到不常见的类规则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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