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HN-Sim: A Structural Similarity Measure over Object-Behavior Networks

机译:HN-SIM:对象行为网络的结构相似度测量

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Measurement of similarity is a critical work for many applications such as text analysis, link prediction and recommendation. However, existing work stresses on content and rarely involves structural features. Even fewer methods are applicable for heterogeneous network, which is prevalent in the real world, such as bibliographic information network. To address this problem, we propose a new measurement of similarity from the perspective of the heterogeneous structure. Heterogeneous neighborhood is utilized to instantiate the topological features and categorize the related nodes in graph model. We make a comparison between our measurement and some traditional ones with the real data in DBLP and Flickr. Manual evaluation shows that our method outperforms the traditional ones.
机译:相似性的测量是许多应用的关键工作,例如文本分析,链接预测和推荐。然而,现有的工作压力对内容并很少涉及结构特征。甚至更少的方法适用于异构网络,其在现实世界中普遍存在,例如书目信息网络。为了解决这个问题,我们提出了从异构结构的角度来看相似度的新测量。异构邻域用于实例化拓扑特征,并将相关节点分类为图形模型中。我们在DBLP和Flickr中的测量和一些传统数据之间进行了比较。手动评估表明我们的方法优于传统的方法。

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