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Scalable Model for Mining Critical Least Association Rules

机译:关键最小关联规则的可扩展模型

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A research in mining least association rules is still outstanding and thus requiring more attentions. Until now; only few algorithms and techniques are developed to mine the significant least association rules. In addition, mining such rules always suffered from the high computational costs, complicated and required dedicated measurement. Therefore, this paper proposed a scalable model called Critical Least Association Rule (CLAR) to discover the significant and critical least association rules. Experiments with a real and UCI datasets show that the CLAR can generate the critical least association rules, up to 1.5 times faster and less 100% complexity than benchmarked FP-Growth.
机译:挖掘最小关联规则的研究仍然很出色,因此需要更多的关注。到现在;仅开发了很少的算法和技术来挖掘重要的最小关联规则。另外,挖掘这样的规则总是遭受高计算成本,复杂且需要专用测量的困扰。因此,本文提出了一种称为关键最小关联规则(CLAR)的可扩展模型,以发现重要的关键最小关联规则。使用真实数据集和UCI数据集进行的实验表明,CLAR可以生成关键的最小关联规则,比基准FP-Growth的速度快1.5倍,复杂度也低100%。

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