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An Ontological Characterization of Time-Series and State-Sequences for Data Mining

机译:时间序列和状态序列的数据挖掘本体表征

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Time-series and sequences are important patterns in data mining. Based on an ontology of time-elements, this paper presents a formal characterization of time-series and state-sequences, where a state denotes a collection of data whose validation is dependent on time. While a time-series is formalized as a vector of time-elements temporally ordered one after another, a state-sequence is denoted as a list of states correspondingly ordered by a time-series. In general, a time-series and a state-sequence can be incomplete in various ways. This leads to the distinction between complete and incomplete time-series, and between complete and incomplete state-sequences, which allows the expression of both absolute and relative temporal knowledge in data mining.
机译:时间序列和序列是数据挖掘中的重要模式。基于时间元素的本体,本文提出了时间序列和状态序列的形式化描述,其中状态表示数据的集合,其有效性取决于时间。虽然将时间序列形式化为时间上一个接一个地排序的时间矢量,但状态序列表示为按时间序列相应排序的状态列表。通常,时间序列和状态序列可能以各种方式不完整。这导致了完整和不完整的时间序列之间以及完整和不完整的状态序列之间的区别,从而允许在数据挖掘中表达绝对和相对时间知识。

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