一种寻找规则代表集的方法

Jiye Li, N. Cercone, Jianchao Han
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引用次数: 8

摘要

使用粗糙集理论来选择可以表示原始数据集的基本属性是众所周知的。从这些基本属性中发现的知识通常表示为规则,因此代表原始数据。作为“规则即属性度量”的扩展,我们提出了规则评估的三个结果。首先,我们提出了一种为给定数据集寻找具有代表性的规则集的方法。其次,我们认为ROSETTA软件的Johnson’s reducer生成的约简规则数最少,可以认为是原始知识的最小表示。我们的第三个结果提供了一种基于规则重要性度量和寻找规则代表集方法的规则评估集成方法。我们认为,这种方法可以将代表性规则排序推向一个新的阶段。提出这些方法是为了方便规则评估,并能提供对原始数据集的自动和完整的理解。
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A Method of Finding Representative Sets of Rules
The use of rough sets theory to select essential attributes that can represent the original data set is well known. Knowledge discovered from such essential attributes are typically represented as rules, and are therefore representative of the original data. We present three results towards rule evaluation as an extension of the "rules-as-attributes measure ". First, we present an approach of finding representative sets of rules for a given data set. Secondly, we suggest that the Johnson's reducer of the ROSETTA software generates a reduct with the minimum number of rules, and can be considered as a minimum representation of the original knowledge. Our third result provides an integrated approach for rule evaluation based on both the rule importance measure and the method of finding representative sets of rules. We argue that this approach can take the representative rules ranking into a further stage. These approaches are proposed to facilitate the rule evaluations and can provide an automatic and complete comprehension of the original data set.
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