LaplacianFormer:Rethinking Linear Attention with Laplacian Kernel
Abstract
The quadratic complexity of softmax attention presents a major obstacle for scaling Transformers to high-resolution vision tasks. Existing linear attention variants often replace the softmax with Gaussian kernels to reduce complexity, but such approximations lack theoretical grounding and tend to oversuppress mid-range token interactions. We propose LaplacianFormer, a Transformer variant that employs a Laplacian kernel as a principled alternative to softmax, motivated by empirical observations and theoretical analysis. To address expressiveness degradation under low-rank approximations, we introduce a provably injective feature map that retains fine-grained token information. For efficient computation, we adopt a Nyström approximation of the kernel matrix and solve the resulting system using Newton--Schulz iteration, avoiding costly matrix inversion and SVD. We further develop custom CUDA implementations for both the kernel and solver, enabling high-throughput forward and backward passes suitable for edge deployment. Experiments on ImageNet show that LaplacianFormer achieves strong performance-efficiency trade-offs while improving attention expressiveness. Code is available at the following site: \href{https://mike7472727.github.io/laplacianformer.github.io/}{\textcolor{black}LaplacianFormer }.
Cite
Text
Feng et al. "LaplacianFormer:Rethinking Linear Attention with Laplacian Kernel." International Conference on Learning Representations, 2026.Markdown
[Feng et al. "LaplacianFormer:Rethinking Linear Attention with Laplacian Kernel." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/feng2026iclr-laplacianformer/)BibTeX
@inproceedings{feng2026iclr-laplacianformer,
title = {{LaplacianFormer:Rethinking Linear Attention with Laplacian Kernel}},
author = {Feng, Zhe and Lian, Sen and Wang, Changwei and Zhang, Muyang and Tan, Tianlong and Xu, Rongtao and Meng, Weiliang and Zhang, Xiaopeng},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/feng2026iclr-laplacianformer/}
}