English

StoTAM: Stochastic Alternating Minimization for Tucker-Structured Tensor Sensing

Machine Learning 2026-01-21 v1 Optimization and Control

Abstract

Low-rank tensor sensing is a fundamental problem with broad applications in signal processing and machine learning. Among various tensor models, low-Tucker-rank tensors are particularly attractive for capturing multi-mode subspace structures in high-dimensional data. Existing recovery methods either operate on the full tensor variable with expensive tensor projections, or adopt factorized formulations that still rely on full-gradient computations, while most stochastic factorized approaches are restricted to tensor decomposition settings. In this work, we propose a stochastic alternating minimization algorithm that operates directly on the core tensor and factor matrices under a Tucker factorization. The proposed method avoids repeated tensor projections and enables efficient mini-batch updates on low-dimensional tensor factors. Numerical experiments on synthetic tensor sensing demonstrate that the proposed algorithm exhibits favorable convergence behavior in wall-clock time compared with representative stochastic tensor recovery baselines.

Keywords

Cite

@article{arxiv.2601.13522,
  title  = {StoTAM: Stochastic Alternating Minimization for Tucker-Structured Tensor Sensing},
  author = {Shuang Li},
  journal= {arXiv preprint arXiv:2601.13522},
  year   = {2026}
}
R2 v1 2026-07-01T09:11:40.674Z