TL;DR
TGNE introduces a novel Gaussian embedding approach for continuous-time temporal networks, capturing both structural dynamics and uncertainty, improving graph reconstruction and understanding temporal evolution.
Contribution
It combines latent space models with temporal graph learning by embedding nodes as Gaussian trajectories, addressing sparsity and uncertainty in continuous-time data.
Findings
TGNE achieves competitive graph reconstruction accuracy.
Uncertainty estimates correlate with network degree distribution.
Open-source implementation available for reproducibility.
Abstract
Representing the nodes of continuous-time temporal graphs in a low-dimensional latent space has wide-ranging applications, from prediction to visualization. Yet, analyzing continuous-time relational data with timestamped interactions introduces unique challenges due to its sparsity. Merely embedding nodes as trajectories in the latent space overlooks this sparsity, emphasizing the need to quantify uncertainty around the latent positions. In this paper, we propose TGNE (\textbf{T}emporal \textbf{G}aussian \textbf{N}etwork \textbf{E}mbedding), an innovative method that bridges two distinct strands of literature: the statistical analysis of networks via Latent Space Models (LSM)\cite{Hoff2002} and temporal graph machine learning. TGNE embeds nodes as piece-wise linear trajectories of Gaussian distributions in the latent space, capturing both structural information and uncertainty around…
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