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Guarantees of Augmented Trace Norm Models in Tensor Recovery

International Joint Conference on Artificial Intelligence (IJCAI), 2012
Abstract

This paper studies the recovery guarantees of the models of minimizing X+12αXF2\|\mathcal{X}\|_*+\frac{1}{2\alpha}\|\mathcal{X}\|_F^2 where X\mathcal{X} is a tensor and X\|\mathcal{X}\|_* and XF\|\mathcal{X}\|_F are the trace and Frobenius norm of respectively. We show that they can efficiently recover low-rank tensors. In particular, they enjoy exact guarantees similar to those known for minimizing X\|\mathcal{X}\|_* under the conditions on the sensing operator such as its null-space property, restricted isometry property, or spherical section property. To recover a low-rank tensor X0\mathcal{X}^0, minimizing X+12αXF2\|\mathcal{X}\|_*+\frac{1}{2\alpha}\|\mathcal{X}\|_F^2 returns the same solution as minimizing X\|\mathcal{X}\|_* almost whenever α10maxiX(i)02\alpha\geq10\mathop {\max}\limits_{i}\|X^0_{(i)}\|_2.

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