arXiv Open Access 2025

Message-Passing State-Space Models: Improving Graph Learning with Modern Sequence Modeling

Andrea Ceni Alessio Gravina Claudio Gallicchio Davide Bacciu Carola-Bibiane Schonlieb +1 lainnya
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Abstrak

The recent success of State-Space Models (SSMs) in sequence modeling has motivated their adaptation to graph learning, giving rise to Graph State-Space Models (GSSMs). However, existing GSSMs operate by applying SSM modules to sequences extracted from graphs, often compromising core properties such as permutation equivariance, message-passing compatibility, and computational efficiency. In this paper, we introduce a new perspective by embedding the key principles of modern SSM computation directly into the Message-Passing Neural Network framework, resulting in a unified methodology for both static and temporal graphs. Our approach, MP-SSM, enables efficient, permutation-equivariant, and long-range information propagation while preserving the architectural simplicity of message passing. Crucially, MP-SSM enables an exact sensitivity analysis, which we use to theoretically characterize information flow and evaluate issues like vanishing gradients and over-squashing in the deep regime. Furthermore, our design choices allow for a highly optimized parallel implementation akin to modern SSMs. We validate MP-SSM across a wide range of tasks, including node classification, graph property prediction, long-range benchmarks, and spatiotemporal forecasting, demonstrating both its versatility and strong empirical performance.

Topik & Kata Kunci

Penulis (6)

A

Andrea Ceni

A

Alessio Gravina

C

Claudio Gallicchio

D

Davide Bacciu

C

Carola-Bibiane Schonlieb

M

Moshe Eliasof

Format Sitasi

Ceni, A., Gravina, A., Gallicchio, C., Bacciu, D., Schonlieb, C., Eliasof, M. (2025). Message-Passing State-Space Models: Improving Graph Learning with Modern Sequence Modeling. https://arxiv.org/abs/2505.18728

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Tahun Terbit
2025
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en
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arXiv
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Open Access ✓