EvoFormer: Learning Dynamic Graph-Level Representations with Structural and Temporal Bias Correction
Haodi Zhong, Liuxin Zou, Di Wang, Bo Wang, Zhenxing Niu, Quan Wang

TL;DR
EvoFormer is a Transformer-based framework designed to improve dynamic graph-level representations by addressing biases in structural sampling and abrupt structural changes, leading to better performance in tasks like anomaly detection and segmentation.
Contribution
It introduces novel modules for structural role encoding and evolution-sensitive temporal modeling, effectively mitigating key biases in dynamic graph learning.
Findings
Achieves state-of-the-art results in graph similarity ranking
Effective in temporal anomaly detection
Accurately segments structural evolution periods
Abstract
Dynamic graph-level embedding aims to capture structural evolution in networks, which is essential for modeling real-world scenarios. However, existing methods face two critical yet under-explored issues: Structural Visit Bias, where random walk sampling disproportionately emphasizes high-degree nodes, leading to redundant and noisy structural representations; and Abrupt Evolution Blindness, the failure to effectively detect sudden structural changes due to rigid or overly simplistic temporal modeling strategies, resulting in inconsistent temporal embeddings. To overcome these challenges, we propose EvoFormer, an evolution-aware Transformer framework tailored for dynamic graph-level representation learning. To mitigate Structural Visit Bias, EvoFormer introduces a Structure-Aware Transformer Module that incorporates positional encoding based on node structural roles, allowing the model…
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