Tensor completion and robust principal component analysis have been widely used in machine learning while the key problem relies on the minimization of a tensor rank that is very challenging. A common way to tackle this difficulty is to approximate the tensor rank with the $\ell_1-$norm of singular values based on its Tensor Singular Value Decomposition (T-SVD). Besides, the sparsity of a tensor is also measured by its $\ell_1-$norm. However, the $\ell_1$ penalty is essentially biased and thus the result will deviate. In order to sidestep the bias, we propose a novel non-convex tensor rank surrogate function and a novel non-convex sparsity measure. In this new setting by using the concavity instead of the convexity, a majorization minimization algorithm is further designed for tensor completion and robust principal component analysis. Furthermore, we analyze its theoretical properties. Finally, the experiments on natural and hyperspectral images demonstrate the efficacy and efficiency of our proposed method.
翻译:在机器学习中广泛使用了电锯完成率和强力主元件分析,而关键问题在于如何尽量减少极具挑战性的电压等级。解决这一困难的一个共同办法是,以基于其Tensor Singular值分解(T-SVD)的单值的元值的元值的元值约等于1美元至1美元至1美元。此外,还用其美元至1美元至1美元的主要元件分析量度强。然而,美元至1美元的罚款基本上是有偏差的,因此其结果会有所偏离。为了绕过偏差,我们提出了一个新的非电流式高频级代谢功能和新颖的非电磁度测量尺度。在这个新环境中,通过使用凝固度而不是凝固度,进一步设计了一种主要最小化算法,以达到超速完成率和稳健的主要元件分析。此外,我们分析了其理论属性。最后,关于自然和超光谱图像的实验显示了我们拟议方法的功效和效率。