Skip to yearly menu bar Skip to main content


On the Convergence of Encoder-only Shallow Transformers

Yongtao Wu · Fanghui Liu · Grigorios Chrysos · Volkan Cevher

Great Hall & Hall B1+B2 (level 1) #1621
[ ]
Tue 12 Dec 3:15 p.m. PST — 5:15 p.m. PST


In this paper, we aim to build the global convergence theory of encoder-only shallow Transformers under a realistic setting from the perspective of architectures, initialization, and scaling under a finite width regime. The difficulty lies in how to tackle the softmax in self-attention mechanism, the core ingredient of Transformer. In particular, we diagnose the scaling scheme, carefully tackle the input/output of softmax, and prove that quadratic overparameterization is sufficient for global convergence of our shallow Transformers under commonly-used He/LeCun initialization in practice. Besides, neural tangent kernel (NTK) based analysis is also given, which facilitates a comprehensive comparison. Our theory demonstrates the separation on the importance of different scaling schemes and initialization. We believe our results can pave the way for a better understanding of modern Transformers, particularly on training dynamics.

Chat is not available.