Part of Advances in Neural Information Processing Systems 28 (NIPS 2015)
Qinqing Zheng, Ryota Tomioka
We consider the problem of recovering a low-rank tensor from its noisy observation. Previous work has shown a recovery guarantee with signal to noise ratio O(n\ceilK/2/2) for recovering a Kth order rank one tensor of size n×⋯×n by recursive unfolding. In this paper, we first improve this bound to O(nK/4) by a much simpler approach, but with a more careful analysis. Then we propose a new norm called the \textit{subspace} norm, which is based on the Kronecker products of factors obtained by the proposed simple estimator. The imposed Kronecker structure allows us to show a nearly ideal O(√n+√HK−1) bound, in which the parameter H controls the blend from the non-convex estimator to mode-wise nuclear norm minimization. Furthermore, we empirically demonstrate that the subspace norm achieves the nearly ideal denoising performance even with H=O(1).