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Mining Condensed Non-Redundant Level-Crossing Approximate Association Rules

机译:挖掘压缩的非冗余级别交叉近似关联规则

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In association rule mining one intractable problem is the huge number of the extracted rules, especially, in the case of level-crossing association rules. In this paper, aiming at the redundancy produced during level-crossing association rules mining, an approach for eliminating level-crossing approximate redundant rules is proposed. In the method, the redundancies are divided combination with the dataset's hierarchy or taxonomy into two categories: hierarchical SelfRedundancy and Inter-Redundancy, thus in the mining processing, deleting the Self-Redundant rules, removing the redundant rules from the InterRedundancy based on their definitions and characters in respective steps. The experiments show that the number of the extracted rules has been considerably reduced.
机译:在关联规则挖掘中,一个棘手的问题是提取的规则数量巨大,尤其是在交叉关联规则的情况下。针对跨级别关联规则挖掘过程中产生的冗余,提出了一种消除跨级别近似冗余规则的方法。在该方法中,将冗余与数据集的层次结构或分类法结合起来分为两类:分层的SelfRedundancy和Inter-Redundancy,因此在挖掘处理中,删除Self-Redundant规则,根据其定义从InterRedundancy中删除冗余规则和各个步骤中的字符。实验表明,提取规则的数量已大大减少。

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