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Poster Session 2 · Wednesday, December 3, 2025 4:30 PM → 7:30 PM
#5512 Spotlight

E2Former: An Efficient and Equivariant Transformer with Linear-Scaling Tensor Products

NeurIPS OpenReview

Abstract

Equivariant Graph Neural Networks (EGNNs) have demonstrated significant success in modeling microscale systems, including those in chemistry, biology and materials science. However, EGNNs face substantial computational challenges due to the high cost of constructing edge features via spherical tensor products, making them almost impractical for large-scale systems.
To address this limitation, we introduce E2Former, an equivariant and efficient transformer architecture that incorporates a Wigner convolution (Wigner Conv). By shifting the computational burden from edges to nodes, Wigner Conv reduces the complexity from to while preserving both the model's expressive power and rotational equivariance. We show that this approach achieves a 7x–30x speedup compared to conventional convolutions.
Furthermore, our empirical results demonstrate that the derived E2Former mitigates the computational challenges of existing approaches without compromising the ability to capture detailed geometric information. This development could suggest a promising direction for scalable molecular modeling.