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M~2SP: Mining Sequential Patterns Among Several Dimensions

机译:M〜2SP:几个维度之间的挖掘序列模式

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摘要

Mining sequential patterns aims at discovering correlations between events through time. However, even if many works have dealt with sequential pattern mining, none of them considers frequent sequential patterns involving several dimensions in the general case. In this paper, we propose a novel approach, called M~2SP, to mine multidimensional sequential patterns. The main originality of our proposition is that we obtain not only intra-pattern sequences but also inter-pattern sequences. Moreover, we consider generalized multidimensional sequential patterns, called jokerized patterns, in which some of the dimension values may not be instanciated. Experiments on synthetic data are reported and show the scalability of our approach.
机译:挖掘顺序模式旨在通过时间发现事件之间的相关性。然而,即使许多作品都处理了顺序模式挖掘,它们均未考虑常见的顺序模式,涉及一般情况下的几个维度。在本文中,我们提出了一种称为M〜2SP的新方法,以挖掘多维序列模式。我们主张的主要原创性是我们不仅获得了模式内序列,而且获得了模式间序列。此外,我们考虑广义多维顺序模式,称为发短信模式,其中可能无法启示一些维值。报告了合成数据的实验并显示了我们方法的可扩展性。

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