LGSIDec 23, 2022

Piecewise-Velocity Model for Learning Continuous-time Dynamic Node Representations

arXiv:2212.12345v19 citationsh-index: 34
Originality Incremental advance
AI Analysis

This work addresses the lack of efficient continuous-time dynamic graph representation learning methods, offering improved network characterization for domains like social or biological networks, though it appears incremental as it builds on latent distance models with novel velocity approximations.

The paper tackles the challenge of learning continuous-time dynamic node representations for evolving networks, proposing the Piecewise-Velocity Model (PiVeM) which outperforms state-of-the-art methods in tasks like link prediction and enables interpretable visualizations in ultra-low two-dimensional spaces.

Networks have become indispensable and ubiquitous structures in many fields to model the interactions among different entities, such as friendship in social networks or protein interactions in biological graphs. A major challenge is to understand the structure and dynamics of these systems. Although networks evolve through time, most existing graph representation learning methods target only static networks. Whereas approaches have been developed for the modeling of dynamic networks, there is a lack of efficient continuous time dynamic graph representation learning methods that can provide accurate network characterization and visualization in low dimensions while explicitly accounting for prominent network characteristics such as homophily and transitivity. In this paper, we propose the Piecewise-Velocity Model (PiVeM) for the representation of continuous-time dynamic networks. It learns dynamic embeddings in which the temporal evolution of nodes is approximated by piecewise linear interpolations based on a latent distance model with piecewise constant node-specific velocities. The model allows for analytically tractable expressions of the associated Poisson process likelihood with scalable inference invariant to the number of events. We further impose a scalable Kronecker structured Gaussian Process prior to the dynamics accounting for community structure, temporal smoothness, and disentangled (uncorrelated) latent embedding dimensions optimally learned to characterize the network dynamics. We show that PiVeM can successfully represent network structure and dynamics in ultra-low two-dimensional spaces. It outperforms relevant state-of-art methods in downstream tasks such as link prediction. In summary, PiVeM enables easily interpretable dynamic network visualizations and characterizations that can further improve our understanding of the intrinsic dynamics of time-evolving networks.

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