Enhanced nonconvex low-rank approximation of tensor multi-modes for tensor completion
This work addresses tensor completion for data processing applications, offering an incremental improvement over existing methods by enhancing low-rank approximations.
The paper tackles the problem of tensor completion under low sampling rates by proposing a novel low-rank approximation method using a double nonconvex Lγ norm to better capture joint-manifold structures, resulting in recovery with significantly fewer samples than compared methods.
Higher-order low-rank tensor arises in many data processing applications and has attracted great interests. Inspired by low-rank approximation theory, researchers have proposed a series of effective tensor completion methods. However, most of these methods directly consider the global low-rankness of underlying tensors, which is not sufficient for a low sampling rate; in addition, the single nuclear norm or its relaxation is usually adopted to approximate the rank function, which would lead to suboptimal solution deviated from the original one. To alleviate the above problems, in this paper, we propose a novel low-rank approximation of tensor multi-modes (LRATM), in which a double nonconvex $L_γ$ norm is designed to represent the underlying joint-manifold drawn from the modal factorization factors of the underlying tensor. A block successive upper-bound minimization method-based algorithm is designed to efficiently solve the proposed model, and it can be demonstrated that our numerical scheme converges to the coordinatewise minimizers. Numerical results on three types of public multi-dimensional datasets have tested and shown that our algorithm can recover a variety of low-rank tensors with significantly fewer samples than the compared methods.