A Survey of Link Prediction in Temporal Networks

February 28, 2025 Β· The Cartographer Β· πŸ› SN Computer Science

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"Title-pattern auto-detect: A Survey of Link Prediction in Temporal Networks"

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Authors Jiafeng Xiong, Ahmad Zareie, Rizos Sakellariou arXiv ID 2502.21185 Category cs.AI: Artificial Intelligence Cross-listed cs.SI Citations 8 Venue SN Computer Science Last Checked 3 days ago
Abstract
Temporal networks have gained significant prominence in the past decade for modelling dynamic interactions within complex systems. A key challenge in this domain is Temporal Link Prediction (TLP), which aims to forecast future connections by analysing historical network structures across various applications including social network analysis. While existing surveys have addressed specific aspects of TLP, they typically lack a comprehensive framework that distinguishes between representation and inference methods. This survey bridges this gap by introducing a novel taxonomy that explicitly examines representation and inference from existing methods, providing a novel classification of approaches for TLP. We analyse how different representation techniques capture temporal and structural dynamics, examining their compatibility with various inference methods for both transductive and inductive prediction tasks. Our taxonomy not only clarifies the methodological landscape but also reveals promising unexplored combinations of existing techniques. This taxonomy provides a systematic foundation for emerging challenges in TLP, including model explainability and scalable architectures for complex temporal networks.
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