Aligning Transformers with Weisfeiler-Leman
Luis Müller, Christopher Morris
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- github.com/luis-mueller/wl-transformersOfficialIn paperpytorch★ 11
Abstract
Graph neural network architectures aligned with the k-dimensional Weisfeiler--Leman (k-WL) hierarchy offer theoretically well-understood expressive power. However, these architectures often fail to deliver state-of-the-art predictive performance on real-world graphs, limiting their practical utility. While recent works aligning graph transformer architectures with the k-WL hierarchy have shown promising empirical results, employing transformers for higher orders of k remains challenging due to a prohibitive runtime and memory complexity of self-attention as well as impractical architectural assumptions, such as an infeasible number of attention heads. Here, we advance the alignment of transformers with the k-WL hierarchy, showing stronger expressivity results for each k, making them more feasible in practice. In addition, we develop a theoretical framework that allows the study of established positional encodings such as Laplacian PEs and SPE. We evaluate our transformers on the large-scale PCQM4Mv2 dataset, showing competitive predictive performance with the state-of-the-art and demonstrating strong downstream performance when fine-tuning them on small-scale molecular datasets. Our code is available at https://github.com/luis-mueller/wl-transformers.