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hier2vec: interpretable multi-granular representation learning for hierarchy in social networks

机译:Hier2VEC:可解释社交网络中层次结构的可解释的多粒度表示学习

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摘要

Network representation learning (NRL) maps vertices into latent vector space for further network inference. The existing algorithms concern more about whether the vectors of two similar nodes be close in latent vector space while the hierarchy proximity has been largely neglected by them. The distribution of the representation vectors needs to reflect the hierarchical structural properties which widely exist in networks. In this paper, we propose a novel network representation learning framework that can encode the interpretable hierarchical structural semantics into the representation vectors. Specifically, we measure the distance and importance degree of nodes in the original network and map the nodes to a tree space. This makes the hierarchical structural relations in the original network be clearly revealed by the tree which is also of good interpretability. In this paper, the local structural proximities and the interpretable hierarchy knowledge are encoded into vector space by optimizing the objective function. Extensive experiments conducted on the realistic data sets demonstrate that the proposed approach outperforms the existing state-of-the-art approaches on tasks of node classification, link prediction, and visualization. Finally, a case study is conducted for further analysis about how the proposed model works.
机译:网络表示学习(NRL)映射顶点到用于另外的网络推理潜向量空间。现有算法关注更多关于两个类似节点的载体是否接近潜向量空间,而层次接近已被他们基本上被忽视。表示矢量的分布需要反映其广泛存在于网络中的分层结构特性。在本文中,我们提出了一种新颖的网络表示学习框架可编码所述可解释的分层结构的语义到表示向量。具体而言,我们测量了原网络中节点的距离和重要性程度和节点映射到树的空间。这使得原来的网络中的层次结构关系由树,这也是很好的解释性的明确透露。在本文中,局部结构邻近性和可解释的层次结构的知识通过优化所述目标函数编码到向量空间。在现实的数据集进行了广泛的实验结果表明,所提出的方法优于现有的国家的最先进的上节点的分类,链路预测和可视化的方法的任务。最后,一个案例研究有关建议的模型是如何工作的进一步的分析。

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