Rule-Based Attribute-Oriented Induction for Knowledge Discovery

N. D. Thanh, Ngo Tuan Phong, N. K. Anh
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引用次数: 2

Abstract

This paper introduces a rule-based Attribute-Oriented (AO) Induction method on rule-based concept hierarchies that can be constructed from generalization rules. Based on analyzing some major previous approaches such as rule-based AO induction with backtracking, path-id based AO induction and a cyclic graph based AO induction, we propose a new approach to facilitate induction on the rule based case that can avoid a problem of anomaly and overcome disadvantages of these above methods. Experimental studies show that the new approach is efficient and suitable for providing condensed and qualified summarizations.
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基于规则的面向属性的知识发现归纳
本文介绍了一种基于规则的面向属性(Attribute-Oriented, AO)归纳法,该归纳法适用于由泛化规则构造的基于规则的概念层次。在分析了基于规则的带回溯的AO归纳方法、基于路径id的AO归纳方法和基于循环图的AO归纳方法等主要方法的基础上,提出了一种新的基于规则的AO归纳方法,既避免了异常问题,又克服了上述方法的缺点。实验研究表明,该方法是有效的,适合于提供简明、合格的摘要。
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