Attention-based architectures have become ubiquitous in machine learning, yet our understanding of the reasons for their effectiveness remains limited. This work proposes a new way to understand self-attention networks: we show that their output can be decomposed into a sum of smaller terms, each involving the operation of a sequence of attention heads across layers. Using this decomposition, we prove that self-attention possesses a strong inductive bias towards "token uniformity". Specifically, without skip connections or multi-layer perceptrons (MLPs), the output converges doubly exponentially to a rank-1 matrix. On the other hand, skip connections and MLPs stop the output from degeneration. Our experiments verify the identified convergence phenomena on different variants of standard transformer architectures.
Attention is Not All You Need: Pure Attention Loses Rank Doubly Exponentially with Depth
Self-attention networks exhibit a bias towards token uniformity, converging to a rank-1 matrix in the absence of skip connections and MLPs, but these mechanisms prevent degeneration.
- Year
- 2021
- Venue
- arXiv 2021
- Authors
- 3
- Hosting
- Abstract onlyARXIV-DEFAULT
Cite
Notes
Only stored in your browser.
Attribution
- Abstract & full text
- arxiv.org/abs/2103.03404v2ARXIV-DEFAULT
- TL;DR
- Semantic Scholar