Higher-Order Temporal Network Prediction and Interpretation
H.A. Bart Peters, Alberto Ceria, and Huijuan Wang

TL;DR
This paper introduces novel memory-based models for predicting higher-order temporal network interactions, outperforming traditional pairwise methods and providing insights into network properties influencing future interactions.
Contribution
The paper presents new models specifically designed for higher-order temporal network prediction, addressing a gap in traditional pairwise-focused methods and analyzing network memory properties.
Findings
Models outperform baseline in eight real-world networks.
Refined model achieves the best prediction performance.
Past interactions and overlapping hyperlinks significantly influence future activity.
Abstract
A social interaction (so-called higher-order event/interaction) can be regarded as the activation of the hyperlink among the corresponding individuals. Social interactions can be, thus, represented as higher-order temporal networks, that record the higher-order events occurring at each time step over time. The prediction of higher-order interactions is usually overlooked in traditional temporal network prediction methods, where a higher-order interaction is regarded as a set of pairwise interactions. The prediction of future higher-order interactions is crucial to forecast and mitigate the spread the information, epidemics and opinion on higher-order social contact networks. In this paper, we propose novel memory-based models for higher-order temporal network prediction. By using these models, we aim to predict the higher-order temporal network one time step ahead, based on the network…
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