Continuous Geometry-Aware Graph Diffusion via Hyperbolic Neural PDE


연구 분야: Software Development



학회: Joint European Conference on Machine Learning and Knowledge Discovery in Databases


초록

While Hyperbolic Graph Neural Network (HGNN) has recently emerged as a powerful tool dealing with hierarchical graph data, the limitations of scalability and efficiency hinder itself from generalizing to deep models. In this paper, by envisioning depth as a continuous-time embedding evolution, we decouple the HGNN and reframe the information propagation as a partial differential equation, letting node-wise attention undertake the role of diffusivity within the Hyperbolic Neural PDE (HPDE). By introducing theoretical principles e.g., field and flow, gradient, divergence, and diffusivity on a non-Euclidean manifold for HPDE integration, we discuss both implicit and explicit discretization schemes to formulate numerical HPDE solvers. Further, we propose the Hyperbolic Graph Diffusion Equation (HGDE) – a flexible vector flow function that can be integrated to obtain expressive hyperbolic node embeddings. By analyzing potential energy decay of embeddings, we demonstrate that HGDE is capable of modeling both low- and high-order proximity with the benefit of local-global diffusivity functions. Experiments on node classification and link prediction and image-text classification tasks verify the superiority of the proposed method, which consistently outperforms various competitive models by a significant margin.


Author Profile
Jiaxu Liu

Department of Computer Science University of Liverpool Liverpool UK

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Author Profile
Xinping Yi

National Mobile Communications Research Laboratory Southeast University Nanjing China

China
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Sihao Wu

Department of Computer Science University of Liverpool Liverpool UK

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📄 논문 정보

발행 연도 2024년
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출판 국가 China
사이트 Springer
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