RDGSL: Dynamic Graph Representation Learning with Structure Learning
Siwei Zhang, Yun Xiong, Yao Zhang, Yiheng Sun, Xi Chen, Yizhu Jiao and, Yangyong Zhu

TL;DR
RDGSL introduces a novel dynamic graph structure learning approach with a dynamic noise function and attention mechanism, effectively mitigating noise in continuous-time dynamic graphs to improve representation learning and downstream task performance.
Contribution
The paper proposes RDGSL, a new method for dynamic graph representation learning that incorporates structure learning with dynamic noise modeling and attention-based noise filtering.
Findings
Up to 5.1% AUC improvement in evolving classification tasks.
Effective noise mitigation in dynamic graphs enhances downstream task robustness.
Dynamic graph filter captures temporal noise patterns for better denoising.
Abstract
Temporal Graph Networks (TGNs) have shown remarkable performance in learning representation for continuous-time dynamic graphs. However, real-world dynamic graphs typically contain diverse and intricate noise. Noise can significantly degrade the quality of representation generation, impeding the effectiveness of TGNs in downstream tasks. Though structure learning is widely applied to mitigate noise in static graphs, its adaptation to dynamic graph settings poses two significant challenges. i) Noise dynamics. Existing structure learning methods are ill-equipped to address the temporal aspect of noise, hampering their effectiveness in such dynamic and ever-changing noise patterns. ii) More severe noise. Noise may be introduced along with multiple interactions between two nodes, leading to the re-pollution of these nodes and consequently causing more severe noise compared to static graphs.…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Topic Modeling · Data Quality and Management
