Network completion is a harder problem than link prediction because it does not only try to infer missing links but also nodes. Different methods have been proposed to solve this problem, but few of them employed structural information - the similarity of local connection patterns. In this paper, we propose a model named C-GIN to capture the local structural patterns from the observed part of a network based on the Graph Auto-Encoder framework equipped with Graph Isomorphism Network model and generalize these patterns to complete the whole graph. Experiments and analysis on synthetic and real-world networks from different domains show that competitive performance can be achieved by C-GIN with less information being needed, and higher accuracy compared with baseline prediction models in most cases can be obtained. We further proposed a metric "Reachable Clustering Coefficient(CC)" based on network structure. And experiments show that our model perform better on a network with higher Reachable CC.
翻译:网络完成是一个比链接预测更困难的问题,因为网络不仅试图推断缺失的环节,而且尝试了节点。提出了不同的方法来解决这一问题,但其中很少采用结构信息,即本地连接模式的相似性。在本文件中,我们提出了一个名为C-GIN的模型,从基于图图Auto-Eccoder框架的网络观测到的部分中捕捉当地的结构模式,该图中安装了图图Isophorism 网络模型,并对这些模式进行概括,以完成整个图表。对不同领域的合成和现实世界网络的实验和分析表明,C-GIN可以以较少的信息实现竞争性的性能,而在大多数情况下可以取得与基线预测模型的更准确性。我们进一步提出了基于网络结构的“可实现集束(CC)”指标。实验表明,我们的模型在高可达CC的网络上表现更好。