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Discovering interesting itemsets based on change in regularity of occurrence

机译:根据规则性的变化,发现有趣的项目集

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Mining interesting itemsets/patterns is presented and utilized in a wide range of applications. Organizations and businesses have applied this to observe/track/monitor significant occurrence behavior of objects or events. Currently, with the emergence of new technologies, people may change their needs/behaviors in daily life. Thus, analysis of change on occurrence behavior of objects (or events) can be an important issue in several domains. In this paper, we propose to mine interesting itemsets based on change in regularity of occurrence (called ICROs) to capture change on behavior from actions performed by people. A single-pass algorithm, called MICRO, and a tree structure named ICRO-tree are designed to efficiently mine ICROs. Moreover, a pruning strategy is devised to cut-down search space, computation time and memory consumption. Experiments were done to investigate the performance of MICRO and to show efficiency of MICRO on runtime, memory usage and the number of discovered ICROs.
机译:挖掘有趣的项目集/模式在各种应用中呈现并使用。 组织和企业已将其应用于观察/跟踪/监控对象或事件的显着发生行为。 目前,随着新技术的出现,人们可能会在日常生活中改变他们的需求/行为。 因此,对象(或事件)发生行为的变化分析可能是若干域中的重要问题。 在本文中,我们提出了根据事件规律性的变化(称为红外)的变化来提出有趣的项目,以捕捉人们所执行的行动的行为变更。 一个名为iCro-Tree的单通算法,称为微型和树结构,旨在有效地挖掘红外。 此外,修剪策略被设计为减少搜索空间,计算时间和存储器消耗。 进行实验以研究微观的性能,并在运行时,记忆使用和发现的红外数量的微观效率。

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