H2CGL: Modeling Dynamics of Citation Network for Impact Prediction
Guoxiu He, Zhikai Xue, Zhuoren Jiang, Yangyang Kang, Star Zhao, Wei Lu

TL;DR
This paper introduces H2CGL, a novel graph neural network that models the dynamic and heterogeneous citation network over time to improve impact prediction of scientific papers.
Contribution
The study proposes a hierarchical, heterogeneous graph construction and a contrastive learning-based GNN to better capture citation dynamics and influence prediction.
Findings
H2CGL outperforms baseline models on two scholarly datasets.
The model effectively captures temporal citation dynamics.
Contrastive learning enhances the sensitivity of graph representations.
Abstract
The potential impact of a paper is often quantified by how many citations it will receive. However, most commonly used models may underestimate the influence of newly published papers over time, and fail to encapsulate this dynamics of citation network into the graph. In this study, we construct hierarchical and heterogeneous graphs for target papers with an annual perspective. The constructed graphs can record the annual dynamics of target papers' scientific context information. Then, a novel graph neural network, Hierarchical and Heterogeneous Contrastive Graph Learning Model (H2CGL), is proposed to incorporate heterogeneity and dynamics of the citation network. H2CGL separately aggregates the heterogeneous information for each year and prioritizes the highly-cited papers and relationships among references, citations, and the target paper. It then employs a weighted GIN to capture…
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Taxonomy
TopicsAdvanced Graph Neural Networks · scientometrics and bibliometrics research · Expert finding and Q&A systems
Methodsfail · Graph Isomorphism Network · Contrastive Learning
