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Efficient Tree Structures for High Utility Pattern Mining in Incremental Databases

机译:增量数据库中高效实用模式挖掘的高效树结构

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摘要

Recently, high utility pattern (HUP) mining is one of the most important research issues in data mining due to its ability to consider the nonbinary frequency values of items in transactions and different profit values for every item. On the other hand, incremental and interactive data mining provide the ability to use previous data structures and mining results in order to reduce unnecessary calculations when a database is updated, or when the minimum threshold is changed. In this paper, we propose three novel tree structures to efficiently perform incremental and interactive HUP mining. The first tree structure, Incremental HUP Lexicographic Tree ({rm IHUP}_{{rm {L}}}-Tree), is arranged according to an item's lexicographic order. It can capture the incremental data without any restructuring operation. The second tree structure is the IHUP Transaction Frequency Tree ({rm IHUP}_{{rm {TF}}}-Tree), which obtains a compact size by arranging items according to their transaction frequency (descending order). To reduce the mining time, the third tree, IHUP-Transaction-Weighted Utilization Tree ({rm IHUP}_{{rm {TWU}}}-Tree) is designed based on the TWU value of items in descending order. Extensive performance analyses show that our tree structures are very efficient and scalable for incremental and interactive HUP mining.
机译:近年来,高效模式(HUP)挖掘是数据挖掘中最重要的研究问题之一,因为它能够考虑交易中项目的非二进制频率值以及每个项目的不同利润值。另一方面,增量和交互式数据挖掘提供了使用以前的数据结构和挖掘结果的功能,以减少在更新数据库或更改最小阈值时不必要的计算。在本文中,我们提出了三种新颖的树结构来有效地执行增量和交互式HUP挖掘。第一个树结构,即增量HUP词典树({rm IHUP} _ {{rm {L}}}-树)是根据项目的词典顺序排列的。它可以捕获增量数据,而无需任何重组操作。第二个树结构是IHUP交易频率树({rm IHUP} _ {{rm {TF}}}-树),它通过根据交易频率(降序)排列项目来获得紧凑的大小。为了减少挖掘时间,基于项目的TWU值按降序设计了第三棵树,即IHUP事务加权使用率树({rm IHUP} _ {{rm {TWU}}}-Tree)。广泛的性能分析表明,我们的树结构对于增量和交互式HUP挖掘非常有效且可扩展。

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