使用基于差异性的可辨性进行规则归纳的从特定到一般的方法

Y. Kusunoki, T. Tanino
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引用次数: 0

摘要

本文提出了一种新的决策规则归纳法。传统的规则归纳方法通常基于顺序覆盖,使用从一般到特定的方法生成规则的前提,将前提初始化为空,并向其添加条件,直到没有或很少有否定对象被前提覆盖。然而,在本研究中,我们提出了一种规则归纳方法,通过将基于可辨别性的聚类应用于积极对象,使用从特定到一般的方法。在我们的方法中,正面对象使用与簇的可辨别性相关的相似性度量聚类。从得到的聚类中,我们可以通过取聚类中对象的公共条件值来生成决策规则的前提。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Specific-to-general approach for rule induction using discernibility based dissimilarity
In this study, we propose a new decision rule induction approach. Conventional rule induction methods are often based on sequential covering with the general-to-specific approach in which to generate a premise of a rule, the premise is initialized to be empty and conditions are added to it until no or few negative objects are covered by the premise. While, in this study, we propose a rule induction method using the specific-to-general approach by applying discernibility based clustering to positive objects. In our approach, positive objects are clustered using a similarity measure which is related to discernibility of clusters. From an obtained cluster, we can generate a premise of a decision rule by taking common condition values of objects in the cluster.
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