Poster
Global Convergence in Training Large-Scale Transformers
Cheng Gao · Yuan Cao · Zihao Li · Yihan He · Mengdi Wang · Han Liu · Jason Klusowski · Jianqing Fan
West Ballroom A-D #5309
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Abstract
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Fri 13 Dec 4:30 p.m. PST
— 7:30 p.m. PST
Abstract:
Despite the widespread success of Transformers across various domains, their optimization guarantees in large-scale model settings are not well-understood. This paper rigorously analyzes the convergence properties of gradient flow in training Transformers with weight decay regularization. First, we construct the mean-field limit of large-scale Transformers, showing that as the model width and depth go to infinity, gradient flow converges to the Wasserstein gradient flow, which is represented by a partial differential equation. Then, we demonstrate that the gradient flow reaches a global minimum consistent with the PDE solution when the weight decay regularization parameter is sufficiently small. Our analysis is based on a series of novel mean-field techniques that adapt to Transformers. Compared with existing tools for deep networks (Lu et al., 2020) that demand homogeneity and global Lipschitz smoothness, we utilize a refined analysis assuming only $\textit{partial homogeneity}$ and $\textit{local Lipschitz smoothness}$. These new techniques may be of independent interest.
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