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Papers/Training-Induced Escape from Token Clustering in a Mean-Field Formulation of Transformers
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Training-Induced Escape from Token Clustering in a Mean-Field Formulation of Transformers

May 8, 2026

arXiv
Abstract

Transformers perform inference by iteratively transforming token representations across layers. This layerwise computation has been studied empirically, and recent mean-field theories of Transformer dynamics explain how attention can drive token distributions toward clustering. However, existing mean-field analyses largely treat model parameters as prescribed, leaving open how training reshapes this clustering picture. We study this question in a noisy mean-field Transformer in which only a parameter-linear FFN is trained under $L^2$ regularization. We find and analyze a training-induced phase in the dynamics: after initially following attention-driven clustering, the token distribution can leave the clustered regime near the final layers. Our mathematical analysis is based on an entropy-regularized interaction energy that captures the clustering bias of attention. More broadly, our results point toward a training-aware mean-field theory of Transformer dynamics, in which training and inference dynamics are treated together.

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Authors
Noboru Isobe, Daisuke Inoue, Masaaki Imaizumi
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arXiv:2605.07772