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首页> 外文期刊>Data & Knowledge Engineering >TOD: Temporal outlier detection by using quasi-functional temporal dependencies
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TOD: Temporal outlier detection by using quasi-functional temporal dependencies

机译:TOD:通过使用准功能时间相关性检测时间异常值

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摘要

The problem of detecting outliers has been investigated in several research areas such as database, machine learning, knowledge discovery, and logic programming, with the aim of identifying objects of a given population whose behavior is different from that of the other data objects of the dataset. Outliers represent semantically correct situations, albeit infrequent with respect to the majority of cases. Detecting them allows extracting useful and actionable knowledge of interest to domain experts. In this paper, we focus our attention on the analysis of outlier detection in temporal databases. We propose a method, based on association rules, to infer the normal behavior of objects by extracting frequent rules from a given dataset. To include the time information, we define the concept of temporal association rules. Then, temporal association rules are combined to generate temporal quasi-functional dependencies, which define relationships among attributes over time which hold frequently. Once such dependencies have been inferred from data, outliers are retrieved with respect to them. Given a temporal quasi-functional dependency, it is possible to discover the outliers by querying the temporal association rules stored previously. Our method is independent of the considered database and infers rules, used to highlight outliers, directly from data. The applicability of the proposed approach is validated through a set of experiments which show its effectiveness and efficiency.
机译:在数据库,机器学习,知识发现和逻辑编程等几个研究领域中,已经研究了检测离群值的问题,目的是识别给定总体的对象,该对象的行为不同于数据集的其他数据对象。 。离群值表示语义上正确的情况,尽管在大多数情况下并不常见。检测它们可以提取领域专家感兴趣的有用且可操作的知识。在本文中,我们将注意力集中在时间数据库中的异常检测上。我们提出一种基于关联规则的方法,通过从给定数据集中提取频繁规则来推断对象的正常行为。为了包括时间信息,我们定义了时间关联规则的概念。然后,将时间关联规则进行组合以生成时间准功能依赖关系,这些时间依赖关系定义了随时间变化的频繁保持的属性之间的关系。一旦从数据中推断出此类依存关系,便会针对它们检索异常值。给定时间准功能依赖性,可以通过查询先前存储的时间关联规则来发现异常值。我们的方法独立于所考虑的数据库,并从数据中直接推断出用于突出异常值的规则。通过一组实验证明了该方法的有效性和效率,从而验证了该方法的适用性。

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