Benchmark LOW relevance

DRGW: Learning Disentangled Representations for Robust Graph Watermarking

Jiasen Li Yanwei Liu Zhuoyi Shang Xiaoyan Gu Weiping Wang
Published
January 20, 2026
Updated
January 21, 2026

Abstract

Graph-structured data is foundational to numerous web applications, and watermarking is crucial for protecting their intellectual property and ensuring data provenance. Existing watermarking methods primarily operate on graph structures or entangled graph representations, which compromise the transparency and robustness of watermarks due to the information coupling in representing graphs and uncontrollable discretization in transforming continuous numerical representations into graph structures. This motivates us to propose DRGW, the first graph watermarking framework that addresses these issues through disentangled representation learning. Specifically, we design an adversarially trained encoder that learns an invariant structural representation against diverse perturbations and derives a statistically independent watermark carrier, ensuring both robustness and transparency of watermarks. Meanwhile, we devise a graph-aware invertible neural network to provide a lossless channel for watermark embedding and extraction, guaranteeing high detectability and transparency of watermarks. Additionally, we develop a structure-aware editor that resolves the issue of latent modifications into discrete graph edits, ensuring robustness against structural perturbations. Experiments on diverse benchmark datasets demonstrate the superior effectiveness of DRGW.

Metadata

Comment
Published at The Web Conference 2026 (WWW '26)

Pro Analysis

Full threat analysis, ATLAS technique mapping, compliance impact assessment (ISO 42001, EU AI Act), and actionable recommendations are available with a Pro subscription.

Threat Deep-Dive
ATLAS Mapping
Compliance Reports
Actionable Recommendations
Start 14-Day Free Trial