Chen Lin, Jiang Xue, Liu Xingzhao, Zhou Zhixin
IEEE Trans Image Process. 2021;30:3434-3449. doi: 10.1109/TIP.2021.3061908. Epub 2021 Mar 9.
Matrix and tensor completion aim to recover the incomplete two- and higher-dimensional observations using the low-rank property. Conventional techniques usually minimize the convex surrogate of rank (such as the nuclear norm), which, however, leads to the suboptimal solution for the low-rank recovery. In this paper, we propose a new definition of matrix/tensor logarithmic norm to induce a sparsity-driven surrogate for rank. More importantly, the factor matrix/tensor norm surrogate theorems are derived, which are capable of factoring the norm of large-scale matrix/tensor into those of small-scale matrices/tensors equivalently. Based upon surrogate theorems, we propose two new algorithms called Logarithmic norm Regularized Matrix Factorization (LRMF) and Logarithmic norm Regularized Tensor Factorization (LRTF). These two algorithms incorporate the logarithmic norm regularization with the matrix/tensor factorization and hence achieve more accurate low-rank approximation and high computational efficiency. The resulting optimization problems are solved using the framework of alternating minimization with the proof of convergence. Simulation results on both synthetic and real-world data demonstrate the superior performance of the proposed LRMF and LRTF algorithms over the state-of-the-art algorithms in terms of accuracy and efficiency.
矩阵和张量补全旨在利用低秩特性恢复不完整的二维及更高维观测值。传统技术通常会最小化秩的凸替代函数(如核范数),然而,这会导致低秩恢复的次优解。在本文中,我们提出了一种矩阵/张量对数范数的新定义,以引入一个由稀疏性驱动的秩替代函数。更重要的是,我们推导了因子矩阵/张量范数替代定理,该定理能够将大规模矩阵/张量的范数等效地分解为小规模矩阵/张量的范数。基于替代定理,我们提出了两种新算法,称为对数范数正则化矩阵分解(LRMF)和对数范数正则化张量分解(LRTF)。这两种算法将对数范数正则化与矩阵/张量分解相结合,从而实现更精确的低秩逼近和更高的计算效率。使用交替最小化框架并通过收敛性证明来求解由此产生的优化问题。在合成数据和真实数据上的仿真结果表明,所提出的LRMF和LRTF算法在准确性和效率方面优于现有算法。