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FRISSMiner: Mining Frequent Graph Sequence Patterns Induced by Vertices

机译:FRISSiner:挖掘顶点诱导的频繁图序列模式

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The mining of a complete set of frequent subgraphs from labeled graph data has been studied extensively. Furthermore, much attention has recently been paid to frequent pattern mining from graph sequences (dynamic graphs or evolving graphs). In this paper, we define a novel subgraph subsequence class called an "induced subgraph subsequence" to enable the efficient mining of a complete set of frequent patterns from graph sequences containing large graphs and long sequences. We also propose an efficient method for mining frequent patterns, called "FRISSs (Frequent Relevant, and Induced Subgraph Subsequences)", from graph sequences. The fundamental performance of the method is evaluated using artificial datasets, and its practicality is confirmed through experiments using a real-world dataset.
机译:从标记的图形数据中挖掘出完整的频繁子图集已被广泛研究。此外,近来已经非常关注从图序列(动态图或演化图)进行频繁的模式挖掘。在本文中,我们定义了一种新颖的子图子序列类别,称为“诱导子图子序列”,以能够有效地从包含大图和长序列的图序列中挖掘出完整的频繁模式集。我们还提出了一种从图序列中挖掘频繁模式的有效方法,该模式称为“ FRISS(频繁相关和诱导子图子序列)”。该方法的基本性能使用人工数据集进行了评估,其实用性通过使用实际数据集的实验得到了证实。

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