基于相似度和基于嵌入的图链接预测方法的实验评价

M. Islam, Sabeur Aridhi, Malika Smail-Tabbone
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引用次数: 1

摘要

根据图的当前结构推断图中缺失的链接或预测未来的链接的任务称为链接预测。基于成对节点相似度的链接预测方法是文献中公认的方法,尽管它们是启发式的,但在许多现实世界的图中显示出良好的预测性能。另一方面,图嵌入方法学习图中节点的低维表示,能够捕获图的固有特征,从而支持图中后续的链路预测任务。本文研究了在不同领域中具有不同性质的几个基准图(齐次图)上两类方法的选择。除了对方法性能的类别内和类别间比较之外,我们的目标还在于揭示基于图神经网络(GNN)的方法和启发式方法之间的有趣联系,以此作为缓解众所周知的黑盒限制的一种手段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Experimental Evaluation of Similarity-Based and Embedding-Based Link Prediction Methods on Graphs
The task of inferring missing links or predicting future ones 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 and show good prediction performance in many realworld graphs though they are heuristic. On the other hand, graph embedding approaches learn lowdimensional representation of nodes in graph and are capable of capturing inherent graph features, and thus support the subsequent link prediction task in graph. This paper studies a selection of methods from both categories on several benchmark (homogeneous) graphs with different properties from various domains. Beyond the intra and inter category comparison of the performances of the methods, our aim is also to uncover interesting connections between Graph Neural Network(GNN)- based methods and heuristic ones as a means to alleviate the black-box well-known limitation.
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