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S3^3Attention: Improving Long Sequence Attention with Smoothed Skeleton Sketching

IEEE Journal on Selected Topics in Signal Processing (JSTSP), 2024
Xue Wang
Kun Yuan
Wotao Yin
Rong Jin
Main:9 Pages
3 Figures
Bibliography:4 Pages
16 Tables
Appendix:5 Pages
Abstract

Attention based models have achieved many remarkable breakthroughs in numerous applications. However, the quadratic complexity of Attention makes the vanilla Attention based models hard to apply to long sequence tasks. Various improved Attention structures are proposed to reduce the computation cost by inducing low rankness and approximating the whole sequence by sub-sequences. The most challenging part of those approaches is maintaining the proper balance between information preservation and computation reduction: the longer sub-sequences used, the better information is preserved, but at the price of introducing more noise and computational costs. In this paper, we propose a smoothed skeleton sketching based Attention structure, coined S3^3Attention, which significantly improves upon the previous attempts to negotiate this trade-off. S3^3Attention has two mechanisms to effectively minimize the impact of noise while keeping the linear complexity to the sequence length: a smoothing block to mix information over long sequences and a matrix sketching method that simultaneously selects columns and rows from the input matrix. We verify the effectiveness of S3^3Attention both theoretically and empirically. Extensive studies over Long Range Arena (LRA) datasets and six time-series forecasting show that S3^3Attention significantly outperforms both vanilla Attention and other state-of-the-art variants of Attention structures.

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