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On Probabilistic Models for Uncertain Sequential Pattern Mining

机译:关于不确定序列模式挖掘的概率模型

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We study uncertainty models in sequential pattern mining. We consider situations where there is uncertainty either about a source or an event. We show that both these types of uncertainties could be modelled using probabilistic databases, and give possible-worlds semantics for both. We then describe "interestingness" criteria based on two notions of frequentness (previously studied for frequent itemset mining) namely expected support [C. Aggarwal et al. KDD'09;Chui et al., PAKDD'07,'08] and probabilistic frequentness [Bernecker et al., KDD'09]. We study the interestingness criteria from a complexity-theoretic perspective, and show that in case of source-level uncertainty, evaluating probabilistic frequentness is #P-complete, and thus no polynomial time algorithms are likely to exist, but evaluate the interestingness predicate in polynomial time in the remaining cases.
机译:我们在序贯模式挖掘中研究不确定性模型。我们考虑关于源或事件的不确定性的情况。我们表明,两种类型的不确定性都可以使用概率数据库进行建模,并为两者提供可能的世界语义。然后,我们描述了“有趣”标准,基于两种频繁的概念(以前研究过频繁的项目集挖掘)即预期支持[C. Aggarwal等人。 KDD'09; Chui等人,PAKDD'07,'08]和概率频繁度[Bernecker等,KDD'09]。我们从复杂性 - 理论的角度研究有趣的标准,并显示在源水位不确定性的情况下,评估概率频繁度是#p-temply,因此没有可能存在多项式时间算法,但是评估多项式中的有趣谓词在剩下的案件中的时间。

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