English

Stochastic gradient descent in high dimensions for multi-spiked tensor PCA

Machine Learning 2025-10-24 v2 Machine Learning Probability Statistics Theory Statistics Theory

Abstract

We study the high-dimensional dynamics of online stochastic gradient descent (SGD) for the multi-spiked tensor model. This multi-index model arises from the tensor principal component analysis (PCA) problem with multiple spikes, where the goal is to estimate rr unknown signal vectors within the NN-dimensional unit sphere through maximum likelihood estimation from noisy observations of a pp-tensor. We determine the number of samples and the conditions on the signal-to-noise ratios (SNRs) required to efficiently recover the unknown spikes from natural random initializations. We show that full recovery of all spikes is possible provided a number of sample scaling as Np2N^{p-2}, matching the algorithmic threshold identified in the rank-one case [Ben Arous, Gheissari, Jagannath 2020, 2021]. Our results are obtained through a detailed analysis of a low-dimensional system that describes the evolution of the correlations between the estimators and the spikes, while controlling the noise in the dynamics. We find that the spikes are recovered sequentially in a process we term "sequential elimination": once a correlation exceeds a critical threshold, all correlations sharing a row or column index become sufficiently small, allowing the next correlation to grow and become macroscopic. The order in which correlations become macroscopic depends on their initial values and the corresponding SNRs, leading to either exact recovery or recovery of a permutation of the spikes. In the matrix case, when p=2p=2, if the SNRs are sufficiently separated, we achieve exact recovery of the spikes, whereas equal SNRs lead to recovery of the subspace spanned by them.

Keywords

Cite

@article{arxiv.2410.18162,
  title  = {Stochastic gradient descent in high dimensions for multi-spiked tensor PCA},
  author = {Gérard Ben Arous and Cédric Gerbelot and Vanessa Piccolo},
  journal= {arXiv preprint arXiv:2410.18162},
  year   = {2025}
}

Comments

68 pages, 8 figures

R2 v1 2026-06-28T19:33:20.129Z