Publications

Luna: Linear Unified Nested Attention

Abstract

The quadratic computational and memory complexities of the Transformer's attention mechanism have limited its scalability for modeling long sequences. In this paper, we propose Luna, a linear unified nested attention mechanism that approximates softmax attention with two nested linear attention functions, yielding only linear (as opposed to quadratic) time and space complexity. Specifically, with the first attention function, Luna packs the input sequence into a sequence of fixed length. Then, the packed sequence is unpacked using the second attention function. As compared to a more traditional attention mechanism, Luna introduces an additional sequence with a fixed length as input and an additional corresponding output, which allows Luna to perform attention operation linearly, while also storing adequate contextual information. We perform extensive evaluations on three benchmarks of sequence modeling tasks: long-context sequence modelling, neural machine translation and masked language modeling for large-scale pretraining. Competitive or even better experimental results demonstrate both the effectiveness and efficiency of Luna compared to a variety of strong baseline methods including the full-rank attention and other efficient sparse and dense attention methods.

Metadata

publication
Thirty-fifth Conference on Neural Information Processing Systems (NeurIPS-2021), 2021
year
2021
publication date
2021/6/3
authors
Xuezhe Ma, Xiang Kong, Sinong Wang, Chunting Zhou, Jonathan May, Hao Ma, Luke Zettlemoyer
link
https://proceedings.neurips.cc/paper/2021/file/14319d9cfc6123106878dc20b94fbaf3-Paper.pdf
resource_link
https://proceedings.neurips.cc/paper/2021/file/14319d9cfc6123106878dc20b94fbaf3-Paper.pdf
conference
Thirty-fifth Conference on Neural Information Processing Systems (NeurIPS-2021)