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Sketching as a Tool for Understanding and Accelerating Self-attention for Long Sequences

Authors :
Chen, Yifan
Zeng, Qi
Hakkani-Tur, Dilek
Jin, Di
Ji, Heng
Yang, Yun
Publication Year :
2021

Abstract

Transformer-based models are not efficient in processing long sequences due to the quadratic space and time complexity of the self-attention modules. To address this limitation, Linformer and Informer are proposed to reduce the quadratic complexity to linear (modulo logarithmic factors) via low-dimensional projection and row selection respectively. These two models are intrinsically connected, and to understand their connection, we introduce a theoretical framework of matrix sketching. Based on the theoretical analysis, we propose Skeinformer to accelerate self-attention and further improve the accuracy of matrix approximation to self-attention with three carefully designed components: column sampling, adaptive row normalization and pilot sampling reutilization. Experiments on the Long Range Arena (LRA) benchmark demonstrate that our methods outperform alternatives with a consistently smaller time/space footprint.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2112.05359
Document Type :
Working Paper