论文标题

基于相似性和基于GNN的链接预测方法的比较研究

A comparative study of similarity-based and GNN-based link prediction approaches

论文作者

Islam, Md Kamrul, Aridhi, Sabeur, Smail-Tabbone, Malika

论文摘要

基于当前结构推断图中丢失链接的任务称为链接预测。基于成对节点相似性的链接预测方法是文献中建立的良好方法。尽管它们是启发式和缺乏普遍的适用性,但它们在许多真实图表中都表现出良好的预测性能。另一方面,神经网络在各个领域的分类任务的成功导致研究人员在图中进行研究。当神经网络可以直接在图上运行时,则将其称为图形神经网络(GNN)。 GNN能够从图形中学习隐藏的功能,这些功能可用于图形中的链接预测任务。基于GNN的链接预测由于研究人员在许多真实的图表中令人信服的高性能而引起了人们的关注。该评估论文研究了均匀图的域中的一些相似性和基于GNN的链接预测方法,该方法由单一类型的(属性)节点和成对链接组成。我们评估了研究方法针对来自各个领域具有不同特性的几个基准图。

The task of inferring the missing links in a graph based on its current structure is referred to as link prediction. Link prediction methods that are based on pairwise node similarity are well-established approaches in the literature. They show good prediction performance in many real-world graphs though they are heuristics and lack of universal applicability. On the other hand, the success of neural networks for classification tasks in various domains leads researchers to study them in graphs. When a neural network can operate directly on the graph, then it is termed as the graph neural network (GNN). GNN is able to learn hidden features from graphs which can be used for link prediction task in graphs. Link predictions based on GNNs have gained much attention of researchers due to their convincing high performance in many real-world graphs. This appraisal paper studies some similarity and GNN-based link prediction approaches in the domain of homogeneous graphs that consists of a single type of (attributed) nodes and single type of pairwise links. We evaluate the studied approaches against several benchmark graphs with different properties from various domains.

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