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Can Embedding Solve Scalability Issues for Mixed-Data Graph Clustering?

机译:可以嵌入解决混合数据图群集的可伸缩性问题?

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It is widely accepted that the field of Data Analytics has entered into the era of Big Data. In particular, it has to deal with so-called Big Graph Data, which is the focus of this paper. Graph Data is present in many fields, such as Social Networks, Biological Networks, Computer Networks, and so on. It is recognized that data analysts benefit from interactive real time data exploration techniques such as clustering and zoom capabilities on the clusters. However, although clustering is one of the key aspects of graph data analysis, there is a lack of scalable graph clustering algorithms which would support interactive techniques. This paper presents an approach based on combining graph clustering and graph coordinate system embedding, and which shows promising results through initial experiments. Our approach also incorporates both structural and attribute information, which can lead to a more meaningful clustering.
机译:众所周知,数据分析领域已进入大数据的时代。特别是,它必须处理所谓的大图数据,这是本文的重点。图表数据存在于许多字段中,例如社交网络,生物网络,计算机网络等。据认识到,数据分析师受益于交互式实时数据探索技术,例如集群上的聚类和缩放功能。但是,虽然聚类是图数据分析的关键方面之一,但是缺乏可扩展的图形聚类算法,它将支持交互式技术。本文介绍了一种基于组合图聚类和曲线坐标系嵌入的方法,其通过初始实验显示了有希望的结果。我们的方法还包含结构和属性信息,这可能导致更有意义的聚类。

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