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Recovery of simultaneous low rank and two-way sparse coefficient matrices, a nonconvex approach

机译:恢复同时低等级和双向稀疏系数矩阵,是一种非渗透方法

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We study the problem of recovery of matrices that are simultaneously low rank and row and/or column sparse. Such matrices appear in recent applications in cognitive neuroscience, imaging, computer vision, macroeconomics, and genetics. We propose a GDT (Gradient Descent with hard Thresholding) algorithm to efficiently recover matrices with such structure, by minimizing a bi-convex function over a nonconvex set of constraints. We show linear convergence of the iterates obtained by GDT to a region within statistical error of an optimal solution. As an application of our method, we consider multi-task learning problems and show that the statistical error rate obtained by GDT is near optimal compared to minimax rate. Experiments demonstrate competitive performance and much faster running speed compared to existing methods, on both simulations and real data sets.
机译:我们研究了同时低等级和行和/或列稀疏的矩阵恢复的问题。这种矩阵出现在最近的认知神经科学,成像,计算机视觉,宏观经济和遗传学中的应用中。我们提出了一种GDT(梯度下降到硬阈值)算法,以通过最小化非凸起的约束集中的双凸函数来有效地回收矩阵。我们显示GDT在最佳解决方案的统计误差内的区域获得的迭代的线性融合。作为我们的方法的应用,我们考虑多任务学习问题,并表明,与最小值速率相比,GDT获得的统计误差率接近最佳。实验表明,与现有方法相比,在模拟和实际数据集中展示了竞争性能和更快的运行速度。

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