We study the dynamics of stochastic gradient descent (SGD) for a class of sequence models termed Sequence Single-Index (SSI) models, where the target depends on a single direction in input space applied to a sequence of tokens. This setting generalizes classical single-index models to the sequential domain, encompassing simplified one-layer attention architectures. We derive a closed-form expression for the population loss in terms of a pair of sufficient statistics capturing semantic and positional alignment, and characterize the induced high-dimensional SGD dynamics for these coordinates. Our analysis reveals two distinct training phases: escape from uninformative initialization and alignment with the target subspace, and demonstrates how the sequence length and positional encoding influence convergence speed and learning trajectories. These results provide a rigorous and interpretable foundation for understanding how sequential structure in data can be beneficial for learning with attention-based models.
View on arXiv@article{arnaboldi2025_2506.02651, title={ Asymptotics of SGD in Sequence-Single Index Models and Single-Layer Attention Networks }, author={ Luca Arnaboldi and Bruno Loureiro and Ludovic Stephan and Florent Krzakala and Lenka Zdeborova }, journal={arXiv preprint arXiv:2506.02651}, year={ 2025 } }