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Erasable itemset mining over incremental databases with weight conditions

机译:具有权重条件的增量数据库上的可擦除项集挖掘

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Erasable itemset mining is an approach for mining itemsets with low profits from large-scale product databases in order to solve financial crises of plants in manufacturing industries. Previous erasable itemset mining methods deal with static product databases only, and ignore any characteristics such as items' own values when they extract the erasable itemsets. Therefore, such approaches may fail to solve financial crises of plants because they have to iterate a significant number of mining processes in order to deal with real-time product data accumulated from plants in the real world. In this paper, we propose a new tree-based erasable itemset mining algorithm for dynamic databases, which finds erasable itemsets considering the weight conditions from incremental databases. The proposed algorithm uses new tree and list data structures for performing its mining operations more efficiently. Furthermore, the proposed algorithm is capable of reducing the number of mined erasable itemsets by considering the different weight information of items within product databases. We also compare the proposed approach with other tree-based state-of-the-art methods. By performing runtime, memory, pattern quality, and scalability comparisons with respect to various real and synthetic incremental datasets, we show that the proposed algorithm is outstanding in comparison to other previous methods.
机译:可擦除项目集挖掘是一种从大型产品数据库中获取低利润的项目集的方法,目的是解决制造业工厂的金融危机。以前的可擦除项目集挖掘方法仅处理静态产品数据库,并且在提取可擦除项目集时会忽略任何特性,例如项目自身的值。因此,此类方法可能无法解决工厂的财务危机,因为它们必须迭代大量的挖掘过程才能处理现实世界中从工厂累积的实时产品数据。在本文中,我们提出了一种新的基于树的动态数据库可擦除项目集挖掘算法,该算法考虑了增量数据库的权重条件来找到可擦除项目集。所提出的算法使用新的树和列表数据结构来更有效地执行其挖掘操作。此外,所提出的算法能够通过考虑产品数据库内物品的不同重量信息来减少开采的可擦物品集的数量。我们还将提议的方法与其他基于树的最新方法进行了比较。通过对各种实际和合成增量数据集执行运行时,内存,模式质量和可伸缩性比较,我们证明了与其他先前方法相比,所提出的算法非常出色。

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