Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

FMMformer: Efficient and Flexible Transformer via Decomposed Near-field and Far-field Attention

About

We propose FMMformers, a class of efficient and flexible transformers inspired by the celebrated fast multipole method (FMM) for accelerating interacting particle simulation. FMM decomposes particle-particle interaction into near-field and far-field components and then performs direct and coarse-grained computation, respectively. Similarly, FMMformers decompose the attention into near-field and far-field attention, modeling the near-field attention by a banded matrix and the far-field attention by a low-rank matrix. Computing the attention matrix for FMMformers requires linear complexity in computational time and memory footprint with respect to the sequence length. In contrast, standard transformers suffer from quadratic complexity. We analyze and validate the advantage of FMMformers over the standard transformer on the Long Range Arena and language modeling benchmarks. FMMformers can even outperform the standard transformer in terms of accuracy by a significant margin. For instance, FMMformers achieve an average classification accuracy of $60.74\%$ over the five Long Range Arena tasks, which is significantly better than the standard transformer's average accuracy of $58.70\%$.

Tan M. Nguyen, Vai Suliafu, Stanley J. Osher, Long Chen, Bao Wang• 2021

Related benchmarks

TaskDatasetResultRank
Language ModelingWikiText-103 (test)
Perplexity36.11
524
Language ModelingWikiText-103 (val)
PPL35.1
180
Long sequence classificationLRA (Long Range Arena) (test)
Average Accuracy60.74
92
Showing 3 of 3 rows

Other info

Follow for update