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Discovering interesting patterns in large graph cubes

机译:在大型图立方体中发现有趣的模式

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Due to the increasing importance and volume of highly interconnected data, such as in social or information networks, a plethora of graph mining techniques have been designed to enable the analysis of such data. In this work, we focus on the mining of associations between entity features in networks. We model each entity feature as a dimension to be analyzed. Consequently we build our approach on top of the existing graph cube framework which is an extension of the concept of the data cube to networks. Our task is particularly challenging because it requires the analysis of both the initial multidimensional network and all its subsequent aggregate forms. As soon as we deal with a big data situation it is impossible for an analyst to consider manually all the possible views of the network data. The aim of this work is to design an algorithm for the discovery of interesting patterns in large graph cubes. Thus, instead of examining all the possible aggregations manually, the proposed technique leads the analyst to the interesting associations or patterns in the multidimensional network. Furthermore, we study the application of existing algorithms from the frequent itemset mining literature on graph data and propose a mapping between the two settings.
机译:由于高度互连的数据(例如在社交网络或信息网络中)的重要性和数量的日益增长,已经设计了多种图形挖掘技术来实现对此类数据的分析。在这项工作中,我们专注于挖掘网络中实体特征之间的关联。我们将每个实体特征建模为要分析的维度。因此,我们在现有的图立方体框架之上构建了我们的方法,该框架是将数据立方体的概念扩展到网络的。我们的任务特别具有挑战性,因为它需要分析初始的​​多维网络及其所有后续聚合形式。一旦我们处理大数据情况,分析师就不可能手动考虑网络数据的所有可能视图。这项工作的目的是设计一种用于发现大型图形立方体中有趣图案的算法。因此,代替手动检查所有可能的聚集,所提出的技术将分析人员引向多维网络中有趣的关联或模式。此外,我们研究了频繁项集挖掘文献中现有算法在图形数据上的应用,并提出了两种设置之间的映射。

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