Open Access
An Experimental Evaluation of Similarity-Based and Embedding-Based Link Prediction Methods on Graphs
Author(s) -
Kamrul Islam,
Sabeur Aridhi,
Malika Smaïl-Tabbone
Publication year - 2021
Publication title -
international journal of data mining and knowledge management process
Language(s) - English
Resource type - Journals
eISSN - 2231-007X
pISSN - 2230-9608
DOI - 10.5121/ijdkp.2021.11501
Subject(s) - pairwise comparison , computer science , link (geometry) , graph , heuristic , similarity (geometry) , embedding , graph embedding , theoretical computer science , machine learning , artificial intelligence , data mining , computer network , image (mathematics)
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.