AI RESEARCH

Stochastic Scaling Limits and Synchronization by Noise in Deep Transformer Models

arXiv CS.LG

ArXi:2604.26898v1 Announce Type: cross We prove pathwise convergence of the layerwise evolution of tokens in a finite-depth, finite-width transformer model with MultiLayer Perceptron (MLP) blocks to a continuous-time stochastic interacting particle system. We also identify the stochastic partial differential equation describing the evolution of the tokens' distribution in this limit and prove propagation of chaos when the number of such tokens is large. The bounds we establish are quantitative and the limits we consider commute.