AI RESEARCH
Large-Step Training Dynamics of a Two-Factor Linear Transformer Model
arXiv CS.LG
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ArXi:2605.21292v1 Announce Type: cross Gradient-flow analyses show that simplified linear transformers can learn the in-context linear-regression algorithm, but they do not explain the finite-step behavior of gradient descent at large learning rates. Motivated by empirical work on high-learning-rate transformer instabilities and by the cubic-map phase diagram for quadratic regression, we study an exactly reducible one-prompt linear-transformer