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A semantic-rich similarity measure in heterogeneous information networks

机译:异构信息网络中语义丰富的相似性度量

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Most of the existing similarity metrics in heterogeneous information networks depend on the pre-specified meta path or meta-structure. This dependency may cause them to be sensitive to different meta-paths or meta structures. In this paper, we propose a stratified meta-structure-based similarity measure named SMSS in heterogeneous information networks. The stratified meta-structure can be constructed automatically and capture rich semantics. Then, we define the commuting matrix of the stratified meta-structure by virtue of the commuting matrices of meta-paths and meta-structures. As a result, the SMSS is defined by virtue of this commuting matrix. Experimental evaluations show that the existing metrics are sensitive to different meta-paths or meta-structures and that the proposed SMSS outperforms the state-of-the-art metrics in terms of ranking and clustering.
机译:异构信息网络中大多数现有的相似性度量取决于预先指定的元路径或元结构。这种依赖性可能导致它们对不同的元路径或元结构敏感。在本文中,我们提出了一种基于分层基于元结构的相似性度量,称为异构信息网络中的SMSS。分层的元结构可以自动构建并捕获丰富的语义。然后,利用元路径和元结构的交换矩阵,定义分层元结构的交换矩阵。结果,借助于该通勤矩阵来定义SMS。实验评估表明,现有指标对不同的元路径或元结构敏感,并且在排序和聚类方面,建议的SMSS优于最新的指标。

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