COSMOS: Continuous Simplicial Neural Networks
Einizade, Aref, Thanou, Dorina, Malliaros, Fragkiskos D., Giraldo, Jhony H.
–arXiv.org Artificial Intelligence
Simplicial complexes provide a powerful framework for modeling high-order interactions in structured data, making them particularly suitable for applications such as trajectory prediction and mesh processing. However, existing simplicial neural networks (SNNs), whether convolutional or attention-based, rely primarily on discrete filtering techniques, which can be restrictive. In contrast, partial differential equations (PDEs) on simplicial complexes offer a principled approach to capture continuous dynamics in such structures. In this work, we introduce COntinuous SiMplicial neural netwOrkS (COSMOS), a novel SNN architecture derived from PDEs on simplicial complexes. We provide theoretical and experimental justifications of COSMOS's stability under simplicial perturbations. Furthermore, we investigate the over-smoothing phenomenon, a common issue in geometric deep learning, demonstrating that COSMOS offers better control over this effect than discrete SNNs. Our experiments on real-world datasets of ocean trajectory prediction and regression on partial deformable shapes demonstrate that COSMOS achieves competitive performance compared to state-of-the-art SNNs in complex and noisy environments.
arXiv.org Artificial Intelligence
Mar-17-2025
- Country:
- Europe > Switzerland
- North America > United States
- Texas > Tom Green County (0.04)
- Genre:
- Research Report (1.00)
- Technology: