Longitudinal Citation Prediction using Temporal Graph Neural Networks
December 10, 2020 ยท Declared Dead ยท ๐ SDU@AAAI
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Authors
Andreas Nugaard Holm, Barbara Plank, Dustin Wright, Isabelle Augenstein
arXiv ID
2012.05742
Category
cs.CL: Computation & Language
Cross-listed
cs.LG
Citations
20
Venue
SDU@AAAI
Last Checked
4 months ago
Abstract
Citation count prediction is the task of predicting the number of citations a paper has gained after a period of time. Prior work viewed this as a static prediction task. As papers and their citations evolve over time, considering the dynamics of the number of citations a paper will receive would seem logical. Here, we introduce the task of sequence citation prediction. The goal is to accurately predict the trajectory of the number of citations a scholarly work receives over time. We propose to view papers as a structured network of citations, allowing us to use topological information as a learning signal. Additionally, we learn how this dynamic citation network changes over time and the impact of paper meta-data such as authors, venues and abstracts. To approach the new task, we derive a dynamic citation network from Semantic Scholar spanning over 42 years. We present a model which exploits topological and temporal information using graph convolution networks paired with sequence prediction, and compare it against multiple baselines, testing the importance of topological and temporal information and analyzing model performance. Our experiments show that leveraging both the temporal and topological information greatly increases the performance of predicting citation counts over time.
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