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Data mining with temporal abstractions: learning rules from time series

机译:具有时间抽象的数据挖掘:从时间序列中学习规则

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A large volume of research in temporal data mining is focusing on discovering temporal rules from time-stamped data. The majority of the methods proposed so far have been mainly devoted to the mining of temporal rules which describe relationships between data sequences or instantaneous events and do not consider the presence of complex temporal patterns into the dataset. Such complex patterns, such as trends or up and down behaviors, are often very interesting for the users. In this paper we propose a new kind of temporal association rule and the related extraction algorithm; the learned rules involve complex temporal patterns in both their antecedent and consequent. Within our proposed approach, the user defines a set of complex patterns of interest that constitute the basis for the construction of the temporal rule; such complex patterns are represented and retrieved in the data through the formalism of knowledge-based Temporal Abstractions. An Apriori-like algorithm looks then for meaningful temporal relationships (in particular, precedence temporal relationships) among the complex patterns of interest. The paper presents the results obtained by the rule extraction algorithm on a simulated dataset and on two different datasets related to biomedical applications: the first one concerns the analysis of time series coming from the monitoring of different clinical variables during hemodialysis sessions, while the other one deals with the biological problem of inferring relationships between genes from DNA microarray data.
机译:时态数据挖掘中的大量研究都集中在从带有时间戳的数据中发现时态规则。到目前为止,所提出的大多数方法主要致力于挖掘时间规则,这些时间规则描述了数据序列或瞬时事件之间的关系,并且没有考虑到数据集中存在复杂的时间模式。这样的复杂模式(例如趋势或上下行为)通常对用户来说非常有趣。本文提出了一种新型的时间关联规则及相关的提取算法。学习的规则在其前因和结果中都涉及复杂的时间模式。在我们提出的方法中,用户定义了一组复杂的兴趣模式,这些模式构成了构建时间规则的基础;通过基于知识的时间抽象形式化,可以在数据中表示和检索这种复杂的模式。然后,类似于Apriori的算法在感兴趣的复杂模式之间寻找有意义的时间关系(特别是优先时间关系)。本文介绍了规则提取算法在模拟数据集和与生物医学应用相关的两个不同数据集上获得的结果:第一个涉及对血液透析期间监测不同临床变量的时间序列进行分析,而另一个涉及对时间序列的分析。处理从DNA芯片数据推断基因之间关系的生物学问题。

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