Graph Sequential Neural ODE Process for Link Prediction on Dynamic and Sparse Graphs

Abstract

Link prediction on dynamic graphs is an important task in graph mining. Existing approaches based on dynamic graph neural networks (DGNNs) typically require a significant amount of historical data (interactions over time), which is not always available in practice. The missing links over time, which is a common phenomenon in graph data, further aggravate the issue and thus create extremely sparse and dynamic graphs. To address this problem, we propose a novel method based on the neural process, called Graph Sequential Neural ODE Process (GSNOP). Specifically, GSNOP combines the advantage of the neural process and neural ordinary differential equation that models the link prediction on dynamic graphs as a dynamic-changing stochastic process. By defining a distribution over functions, GSNOP introduces the uncertainty to the predictions, making it generalize to more situations instead of overfitting to the sparse data. GSNOP is also agnostic to model structures that can be integrated with any DGNN to consider the chronological and geometrical information for link prediction. Extensive experiments on three dynamic graph datasets show that GSNOP can significantly improve the performance of existing DGNNs and outperform other neural process variants.

Publication
ACM International Conference on Web Search and Data Mining, WSDM-23, Feb 27, 2023 - Mar 3, 2023, Singapore (CORE A*)
Linhao Luo
Linhao Luo
PhD Student @ Monash (02/2022-)

My research interests mainly focus on the areas of artificial intelligence and data mining, especially for the graph neural network and recommendation.

Shirui Pan
Shirui Pan
Professor | ARC Future Fellow

My research interests include data mining, machine learning, and graph analysis.