一种从不完全决策表中挖掘默认确定决策规则的增量算法

Chen Wu, Xiao-lin Hu, Xiajiong Shen, Xiaodan Zhang, Yi Pan
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引用次数: 10

摘要

本文利用由半等价关系派生的半等价类及其在宇宙上的会合块和连接块,提出了一种从不完全决策表中提取我们提出的默认确定规则的增量算法。从不完全信息表中获取默认的确定决策规则和约束规则后,在不完全信息表中添加新数据时,使用增量算法对其进行修改。它不需要重复处理原始数据集,只需更新相关数据和规则。因此,它可以有效地从不完全决策表中执行挖掘任务。通过实例说明了规则的挖掘和修改过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Incremental Algorithm for Mining Default Definite Decision Rules from Incomplete Decision Tables
The present paper puts forward an incremental algorithm for extracting default definite rules proposed by us from incomplete decision table using semi-equivalence classes derived from a semi-equivalence relation and their meet and join blocks on the universe. After default definite decision rules and constraint rules are acquired from the incomplete decision table, the incremental algorithm is used to modify them when new data is added to the incomplete information table. It does not need to process the original dataset repeatedly but only updates related data and rules. So it is effective in performing mining tasks from incomplete decision table. Through an example, a procedure for mining and revising rules is illustrated.
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