Community-Aware Temporal Walks: Parameter-Free Representation Learning on Continuous-Time Dynamic Graphs
Journal:
arXiv
Published Date:
Jan 21, 2025
Abstract
Dynamic graph representation learning plays a crucial role in understanding
evolving behaviors. However, existing methods often struggle with flexibility,
adaptability, and the preservation of temporal and structural dynamics. To
address these issues, we propose Community-aware Temporal Walks (CTWalks), a
novel framework for representation learning on continuous-time dynamic graphs.
CTWalks integrates three key components: a community-based parameter-free
temporal walk sampling mechanism, an anonymization strategy enriched with
community labels, and an encoding process that leverages continuous temporal
dynamics modeled via ordinary differential equations (ODEs). This design
enables precise modeling of both intra- and inter-community interactions,
offering a fine-grained representation of evolving temporal patterns in
continuous-time dynamic graphs. CTWalks theoretically overcomes locality bias
in walks and establishes its connection to matrix factorization. Experiments on
benchmark datasets demonstrate that CTWalks outperforms established methods in
temporal link prediction tasks, achieving higher accuracy while maintaining
robustness.