一种计算决策表约简的有效算法

Do Si Truong, Lam Thanh Hien, N. Thanh Tung
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引用次数: 0

摘要

属性约简是粗糙集理论研究的重要内容之一。决策表中的约简是条件属性的最小子集,它为分类目的提供与整个可用属性集相同的信息。如果使用约简而不是原始的全部属性集,则可以更快地解决高维决策表的分类任务。本文提出了一种基于属性聚类的约简计算算法。该算法主要分为三个阶段。在第一阶段,消除不相关的属性。第二阶段,采用PAM聚类方法,结合属性空间中信息归一化变化的特殊度量,将相关属性划分为适当选择的聚类。在第三阶段,从每个集群中选择与类最相关的代表性属性。选择的属性形成近似约简。对该算法进行了实现和实验。实验结果表明,当选择适当的聚类数量对属性进行分组时,该算法能够计算出小尺寸和高分类精度的近似约简。
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AN EFFECTIVE ALGORITHM FOR COMPUTING REDUCTS IN DECISION TABLES
Attribute reduction is one important part researched in rough set theory. A reduct from a decision table is a minimal subset of the conditional attributes which provide the same information for classification purposes as the entire set of available attributes. The classification task for the high dimensional decision table could be solved faster if a reduct, instead of the original whole set of attributes, is used. In this paper, we propose a reduct computing algorithm using attribute clustering. The proposed algorithm works in three main stages. In the first stage, irrelevant attributes are eliminated. In the second stage relevant attributes are divided into appropriately selected number of clusters by Partitioning Around Medoids (PAM) clustering method integrated with a special metric in attribute space which is the normalized variation of information. In the third stage, the representative attribute from each cluster is selected that is the most class-related. The selected attributes form the approximate reduct. The proposed algorithm is implemented and experimented. The experimental results show that the proposed algorithm is capable of computing approximate reduct with small size and high classification accuracy, when the number of clusters used to group the attributes is appropriately selected.
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