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Generalized Low-Rank Matrix Completion via Nonconvex Schatten $p$-Norm Minimization

机译:通过非凸Schatten $ p $ -范数最小化的广义低秩矩阵完成

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In this paper, we present a generalized low-rank matrix completion (LRMC) model for topological interference management (TIM), thereby maximizing the achievable degrees of freedom (DoFs) only based on the network connectivity information. Unfortunately, contemporary convex relaxation approaches, e.g, nuclear norm minimization, fail to return low-rank solutions, due to the poor structures in the generalized low-rank model. Most existing nonconvex approaches, however, often need the optimal rank as prior information, which is unavailable in our setting. We thus propose a novel nonconvex relaxation approach with the nonconvex Schatten p-norm to provide a tight approximation for the rank function. A smooth function is formulated to approximate the nonsmooth and nonconvex objective, then an Iteratively Reweighted Least Squares (IRLS- p) method is employed to handle the nonconvexity of the model, which iteratively minimizes the weighted Frobenius norm models of smoothed subproblems while driving the smoothing parameter to 0. We further improve the efficiency by proposing an Iteratively Adaptively Reweighted Least Squares (IARLS- p) algorithm, which uses an adaptively updating strategy for the smoothing parameters in each iteration. Numerical results exhibit the ability of the proposed algorithm to find low-rank solutions, that is, it can achieve higher DoFs in most cases.
机译:在本文中,我们提出了一种用于拓扑干扰管理(TIM)的广义低秩矩阵完成(LRMC)模型,从而仅基于网络连接信息来最大化可实现的自由度(DoF)。不幸的是,由于广义低秩模型中的不良结构,当代的凸松弛方法(例如,核规范最小化)无法返回低秩解。但是,大多数现有的非凸方法通常需要将最佳排名用作先验信息,而这在我们的环境中是不可用的。因此,我们提出了一种具有非凸Schatten p范数的新颖的非凸松弛方法,以为秩函数提供严格的近似值。拟定一个平滑函数以逼近非光滑和非凸的目标,然后使用迭代加权最小二乘(IRLS- p)方法来处理模型的非凸性,从而在驱动平滑时迭代地最小化加权后的子问题的Frobenius范数模型参数为0。我们通过提出迭代自适应加权最小二乘(IARLS-p)算法进一步提高了效率,该算法对每次迭代中的平滑参数使用自适应更新策略。数值结果表明了该算法能够找到低秩解,即在大多数情况下可以实现较高的自由度。

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