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Finding Interesting Sequential Patterns in Sequence Data Streams via a Time-Interval Weighting Approach

机译:通过时间间隔加权方法在序列数据流中寻找有趣的顺序模式

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The mining problem over data streams has recently been attracting considerable attention thanks to the usefulness of data mining in various application fields of information science, and sequence data streams are so common in daily life. Therefore, a study on mining sequential patterns over sequence data streams can give valuable results for wide use in various application fields. This paper proposes a new framework for mining novel interesting sequential patterns over a sequence data stream and a mining method based on the framework. Assuming that a sequence with small time-intervals between its data elements is more valuable than others with large time-intervals, the novel interesting sequential pattern is defined and found by analyzing the time-intervals of data elements in a sequence as well as their orders. The proposed framework is capable of obtaining more interesting sequential patterns over sequence data streams whose data elements are highly correlated in terms of generation time.
机译:由于数据挖掘在信息科学的各个应用领域中的有用性,最近数据流上的挖掘问题已引起了相当大的关注,并且序列数据流在日常生活中如此普遍。因此,对序列数据流上的序列模式进行挖掘的研究可以为在各种应用领域中广泛使用提供有价值的结果。本文提出了一种用于在序列数据流上挖掘新颖有趣的序列模式的新框架,以及基于该框架的挖掘方法。假设其数据元素之间具有较小时间间隔的序列比其他具有较大时间间隔的序列更有价值,那么可以通过分析序列中数据元素的时间间隔及其顺序来定义和发现新颖有趣的顺序模式。所提出的框架能够在序列数据流上获得更有趣的顺序模式,其数据元素在生成时间方面高度相关。

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