ICLR2026
The Power of Small Initialization in Noisy Low-Tubal-Rank Tensor Recovery
Zhiyu Liu, Haobo Geng, Xudong Wang, Yandong Tang, Zhi Han, Yao Wang
被引用 1 次
摘要
We study the problem of recovering a low-tubal-rank tensor from noisy linear measurements under the t-product framework. A widely adopted strategy involves factorizing the optimization variable as , where , followed by applying factorized gradient descent (FGD) to solve the resulting optimization problem. Since the tubal-rank of the underlying tensor is typically unknown, this method often assumes , a regime known as over-parameterization. However, when the measurements are corrupted by some dense noise (e.g., sub-Gaussian noise), FGD with the commonly used spectral initialization yields a recovery error that grows linearly with the over-estimated tubal-rank . To address this issue, we show that using a small initialization enables FGD to achieve a nearly minimax optimal recovery error, even when the tubal-rank is significantly overestimated. Using a four-stage analytic framework, we analyze this phenomenon and establish the sharpest known error bound to date, which is independent of the overestimated tubal-rank . Furthermore, we provide a theoretical guarantee showing that an easy-to-use early stopping strategy can achieve the best known result in practice. All these theoretical findings are validated through a series of simulations and real-data experiments.