Weisfeiler and Lehman Go Topological: Message Passing Simplicial Networks
Abstract
The pairwise interaction paradigm of graph machine learning has predominantly governed the modelling of relational systems. However, graphs alone cannot capture the multi-level interactions present in many complex systems and the expressive power of such schemes was proven to be limited. To overcome these limitations, we propose Message Passing Simplicial Networks (MPSNs), a class of models that perform message passing on simplicial complexes (SCs) -- topological objects generalising graphs to higher dimensions. To theoretically analyse the expressivity of our model we introduce a Simplicial Weisfeiler-Lehman (SWL) colouring procedure for distinguishing non-isomorphic SCs. We relate the power of SWL to the problem of distinguishing non-isomorphic graphs and show that SWL and MPSNs are strictly more powerful than the WL test and not less powerful than the 3-WL test. We deepen the analysis by comparing our model with traditional graph neural networks with ReLU activations in terms of the number of linear regions of the functions they can represent. We empirically support our theoretical claims by showing that MPSNs can distinguish challenging strongly regular graphs for which GNNs fail and, when equipped with orientation equivariant layers, they can improve classification accuracy in oriented SCs compared to a GNN baseline. Our model also attains competitive results on real-world graph classification datasets, with best performance on those tasks with a more prominent number of higher-order interactions. Additionally, we implement a library for neural message passing on simplicial complexes that we envision to release in due course.
Cite
Text
Bodnar et al. "Weisfeiler and Lehman Go Topological: Message Passing Simplicial Networks." ICLR 2021 Workshops: GTRL, 2021.Markdown
[Bodnar et al. "Weisfeiler and Lehman Go Topological: Message Passing Simplicial Networks." ICLR 2021 Workshops: GTRL, 2021.](https://mlanthology.org/iclrw/2021/bodnar2021iclrw-weisfeiler/)BibTeX
@inproceedings{bodnar2021iclrw-weisfeiler,
title = {{Weisfeiler and Lehman Go Topological: Message Passing Simplicial Networks}},
author = {Bodnar, Cristian and Frasca, Fabrizio and Wang, Yu Guang and Otter, Nina and Montufar, Guido and Liò, Pietro and Bronstein, Michael M.},
booktitle = {ICLR 2021 Workshops: GTRL},
year = {2021},
url = {https://mlanthology.org/iclrw/2021/bodnar2021iclrw-weisfeiler/}
}