An Invertible Graph Diffusion Neural Network for Source Localization
Junxiang Wang, Junji Jiang, and Liang Zhao

TL;DR
This paper introduces IVGD, an invertible graph diffusion model that automatically learns diffusion rules for source localization, ensuring validity and scalability, and outperforming existing methods on real datasets.
Contribution
The paper presents a novel invertible graph diffusion framework with validity-aware layers and error compensation for accurate source localization.
Findings
IVGD outperforms state-of-the-art methods on nine datasets.
Theoretical guarantees for invertibility and convergence are established.
The model effectively handles unknown diffusion processes and validity constraints.
Abstract
Localizing the source of graph diffusion phenomena, such as misinformation propagation, is an important yet extremely challenging task. Existing source localization models typically are heavily dependent on the hand-crafted rules. Unfortunately, a large portion of the graph diffusion process for many applications is still unknown to human beings so it is important to have expressive models for learning such underlying rules automatically. This paper aims to establish a generic framework of invertible graph diffusion models for source localization on graphs, namely Invertible Validity-aware Graph Diffusion (IVGD), to handle major challenges including 1) Difficulty to leverage knowledge in graph diffusion models for modeling their inverse processes in an end-to-end fashion, 2) Difficulty to ensure the validity of the inferred sources, and 3) Efficiency and scalability in source inference.…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Topic Modeling · Expert finding and Q&A systems
MethodsDiffusion
