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A Unified Convex Surrogate for the Schatten-p Norm

机译:Schatten-P常规的统一凸代王

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摘要

The Schatten-p norm (0 < p < 1) has been widely used to replace the nuclear norm for better approximating the rank function. However, existing methods are either 1) not scalable for large scale problems due to relying on singular value decomposition (SVD) in every iteration, or 2) specific to some p values, e.g., 1/2, and 2/3. In this paper, we show that for any p,p_1, and p_2 > 0 satisfying 1/p = 1/p_1 + 1/p_2, there is an equivalence between the Schatten-p norm of one matrix and the Schatten-p_1 and the Schatten-p_2 norms of its two factor matrices. We further extend the equivalence to multiple factor matrices and show that all the factor norms can be convex and smooth for any p > 0. In contrast, the original Schatten-p norm for 0 < p < 1 is non-convex and non-smooth. As an example we conduct experiments on matrix completion. To utilize the convexity of the factor matrix norms, we adopt the accelerated proximal alternating linearized minimization algorithm and establish its sequence convergence. Experiments on both synthetic and real datasets exhibit its superior performance over the state-of-the-art methods. Its speed is also highly competitive.
机译:Schatten-P Norm(0

0,满足1 / p = 1 / p_1 + 1 / p_2,一个矩阵的Schatten-p标准与Schatten-P_1之间存在等价。 Schatten-P_2其两个因子矩阵的规范。我们进一步扩展到多个因子矩阵的等价,并显示所有因子规范可以为任何P> 0凸出和平滑。相比之下,0

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