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Efficient approach for incremental weighted erasable pattern mining with list structure

机译:具有列表结构的增量加权可擦除模式挖掘的有效方法

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摘要

Erasable pattern mining is one of the important fields of frequent pattern mining. It diagnoses and solves the economic problems that arise in the manufacturing industry. The real-world database is continually accumulated over time, and each item has a different importance. Therefore, if we use conventional erasable pattern mining without considering the characteristics of the real-world database, less meaningful patterns can be extracted. Also, when mining a real-world database, the algorithm must be able to process operations quickly and efficiently. In this paper, in order to meet these requirements, we propose an algorithm which is implemented as a list structure for mining erasable patterns in an incremental database with weighted condition. Compared to existing state-of-the-art mining algorithms, the proposed algorithm performs pattern pruning by applying weighted condition to a dynamic database, so it extracts fewer candidate patterns and shows fast performance. We test our algorithms and the algorithms previously presented with various real datasets and synthetic datasets and obtained results such as run time, memory usage, scalability, and accuracy tests. By analyzing and comparing these experimental results, we show that the proposed algorithm has outstanding performance. (C) 2019 Elsevier Ltd. All rights reserved.
机译:可擦模式挖掘是频繁模式挖掘的重要领域之一。它诊断并解决了制造业中出现的经济问题。随着时间的推移,现实世界数据库会不断积累,并且每个项目都有不同的重要性。因此,如果我们在不考虑实际数据库特征的情况下使用常规的可擦除模式挖掘,则可以提取出有意义程度较低的模式。同样,在挖掘真实数据库时,该算法必须能够快速有效地处理操作。在本文中,为了满足这些要求,我们提出了一种算法,该算法以列表结构的形式实现,用于在具有加权条件的增量数据库中挖掘可擦除模式。与现有的最新挖掘算法相比,该算法通过将加权条件应用于动态数据库来执行模式修剪,因此提取的候选模式更少,并且显示出快速的性能。我们测试了我们的算法以及先前与各种实际数据集和综合数据集一起呈现的算法,并获得了诸如运行时间,内存使用率,可伸缩性和准确性测试之类的结果。通过分析和比较这些实验结果,我们表明该算法具有出色的性能。 (C)2019 Elsevier Ltd.保留所有权利。

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