UniDyG: A Unified and Effective Representation Learning Approach for Large Dynamic Graphs
Yuanyuan Xu, Wenjie Zhang, Xuemin Lin, Ying Zhang

TL;DR
UniDyG introduces a unified representation learning method for large dynamic graphs, effectively capturing structural evolution across different temporal granularities and resisting temporal noise, leading to significant performance improvements.
Contribution
The paper proposes UniDyG, a novel framework with Fourier Graph Attention and energy gating, unifying dynamic graph learning and enhancing robustness against noise.
Findings
Achieves 14.4% average improvement over baselines.
Effectively models both CTDGs and DTDGs.
Demonstrates robustness to temporal noise.
Abstract
Dynamic graphs are formulated in continuous-time or discrete-time dynamic graphs. They differ in temporal granularity: Continuous-Time Dynamic Graphs (CTDGs) exhibit rapid, localized changes, while Discrete-Time Dynamic Graphs (DTDGs) show gradual, global updates. This difference leads to isolated developments in representation learning for each type. To advance representation learning, recent research attempts to design a unified model capable of handling both CTDGs and DTDGs. However, it typically focuses on local dynamic propagation for temporal structure learning in the time domain, failing to accurately capture the structural evolution associated with each temporal granularity. In addition, existing works-whether specific or unified-often overlook the issue of temporal noise, compromising the model robustness and effectiveness. To better model both types of dynamic graphs, we…
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Taxonomy
TopicsAdvanced Graph Neural Networks
MethodsSoftmax · Attention Is All You Need
