LGAIDec 5, 2024

Expressivity of Representation Learning on Continuous-Time Dynamic Graphs: An Information-Flow Centric Review

arXiv:2412.03783v22 citationsh-index: 5Trans. Mach. Learn. Res.
Originality Incremental advance
AI Analysis

This work provides a theoretical foundation and practical guidance for researchers and practitioners working with dynamic graph models, though it is primarily a review and framework development rather than a breakthrough.

This paper tackles the problem of understanding the expressivity of representation learning methods on continuous-time dynamic graphs by introducing a novel theoretical framework that analyzes information flow, and validates insights through empirical evaluations on synthetic and real-world datasets.

Graphs are ubiquitous in real-world applications, ranging from social networks to biological systems, and have inspired the development of Graph Neural Networks (GNNs) for learning expressive representations. While most research has centered on static graphs, many real-world scenarios involve dynamic, temporally evolving graphs, motivating the need for Continuous-Time Dynamic Graph (CTDG) models. This paper provides a comprehensive review of Graph Representation Learning (GRL) on CTDGs with a focus on Self-Supervised Representation Learning (SSRL). We introduce a novel theoretical framework that analyzes the expressivity of CTDG models through an Information-Flow (IF) lens, quantifying their ability to propagate and encode temporal and structural information. Leveraging this framework, we categorize existing CTDG methods based on their suitability for different graph types and application scenarios. Within the same scope, we examine the design of SSRL methods tailored to CTDGs, such as predictive and contrastive approaches, highlighting their potential to mitigate the reliance on labeled data. Empirical evaluations on synthetic and real-world datasets validate our theoretical insights, demonstrating the strengths and limitations of various methods across long-range, bi-partite and community-based graphs. This work offers both a theoretical foundation and practical guidance for selecting and developing CTDG models, advancing the understanding of GRL in dynamic settings.

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