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A Rough Set Based Model to Rank the Importance of Association Rules

机译:基于粗糙集的关联规则重要性排序模型

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Association rule algorithms often generate an excessive number of rules, many of which are not significant. It is difficult to determine which rules are more useful, interesting and important. We introduce a rough set based process by which a rule importance measure is calculated for association rules to select the most appropriate rules. We use ROSETTA software to generate multiple reducts. Apriori association rule algorithm is then applied to generate rule sets for each data set based on each reduct. Some rules are generated more frequently than the others among the total rule sets. We consider such rules as more important. We define rule importance as the frequency of an association rule among the rule sets. Rule importance is different from rule interestingness in that it does not consider the predefined knowledge on what kind of information is considered to be interesting. The experimental results show our method reduces the number of rules generated and at the same time provides a measure of how important is a rule.
机译:关联规则算法通常会生成过多的规则,其中许多并不重要。很难确定哪些规则更有用,更有趣和更重要。我们介绍了一个基于粗糙集的过程,通过该过程可以为关联规则选择最合适的规则来计算规则重要性度量。我们使用ROSETTA软件生成多个还原。然后将先验关联规则算法应用于基于每个归约为每个数据集生成规则集。在总规则集中,某些规则的生成频率高于其他规则。我们认为此类规则更为重要。我们将规则重要性定义为规则集之间关联规则的频率。规则重要性与规则兴趣度的不同之处在于,它不考虑关于哪种信息被认为是有趣的预定义知识。实验结果表明,我们的方法减少了生成规则的数量,同时提供了衡量规则重要性的方法。

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