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HI-Tree: Mining High Influence Patterns Using External and Internal Utility Values

机译:HI-Tree:使用外部和内部效用值挖掘高影响模式

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摘要

We propose an efficient algorithm, called HI-Tree, for mining high influence patterns for an incremental dataset. In traditional pattern mining, one would find the complete set of patterns and then apply a post-pruning step to it. The size of the complete mining results is typically prohibitively large, despite the fact that only a small percentage of high utility patterns are interesting. Thus it is inefficient to wait for the mining algorithm to complete and then apply feature selection to post-process the large number of resulting patterns. Instead of generating the complete set of frequent patterns we are able to directly mine patterns with high utility values in an incremental manner. In this paper we propose a novel utility measure called an influence factor using the concepts of external utility and internal utility of an item. The influence factor for an item takes into consideration its connectivity with its neighborhood as well as its importance within a transaction. The measure is especially useful in problem domains utilizing network or interaction characteristics amongst items such as in a social network or web click-stream data. We compared our technique against state of the art incremental mining techniques and show that our technique has better rule generation and runtime performance.
机译:我们提出了一种有效的算法,称为HI-Tree,用于挖掘增量数据集的高影响力模式。在传统模式挖掘中,人们会找到完整的模式集,然后对其进行后修剪步骤。尽管只有一小部分的高实用模式值得关注,但完整的采矿结果的规模通常过大。因此,等待挖掘算法完成然后应用特征选择来对大量结果模式进行后处理是低效率的。无需生成完整的频繁模式集,我们可以以增量方式直接挖掘具有高实用价值的模式。在本文中,我们使用项目的外部效用和内部效用的概念提出了一种新颖的效用度量,称为影响因子。项目的影响因素考虑到其与附近的连通性以及在交易中的重要性。该措施在利用领域或社交网络或Web点击流数据等项目之间的网络或交互特性的问题域中特别有用。我们将我们的技术与最新的增量挖掘技术进行了比较,并表明我们的技术具有更好的规则生成和运行时性能。

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    Koh YS; Pears RL;

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  • 年度 2015
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