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Solving Separable Nonsmooth Problems Using Frank-Wolfe with Uniform Affine Approximations

机译:用扁平仿射近似使用Frank-Wolfe解决可分离的非牙齿问题

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Frank-Wolfe methods (FW) have gained significant interest in the machine learning community due to their ability to efficiently solve large problems that admit a sparse structure (e.g. sparse vectors and low-rank matrices). However the performance of the existing FW method hinges on the quality of the linear approximation. This typically restricts FW to smooth functions for which the approximation quality, indicated by a global curvature measure, is reasonably good. In this paper, we propose a modified FW algorithm amenable to nonsmooth functions, subject to a separability assumption, by optimizing for approximation quality over all affine functions, given a neighborhood of interest. We analyze theoretical properties of the proposed algorithm and demonstrate that it overcomes many issues associated with existing methods in the context of nonsmooth low-rank matrix estimation.
机译:由于能够有效地解决承认稀疏结构的大问题(例如稀疏的矢量和低级矩阵),Frank-Wolfe方法(FW)在机器学习界中获得了显着兴趣。然而,现有的FW方法铰接对线性近似的质量。这通常将FW限制为平滑函数,其近似质量由全局曲率测量指示的近似质量相当好。在本文中,我们提出了一种修改的FW算法,其适用于不可分散性假设,通过优化所有仿射功能,给定感兴趣的邻域。我们分析了所提出的算法的理论属性,并证明它克服了与非运动低秩矩阵估计的上下文中与现有方法相关的许多问题。

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