Fast, Robust and Non-convex Subspace Recovery

Gilad Lerman, Tyler Maunu
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引用次数: 67

Abstract

This work presents a fast and non-convex algorithm for robust subspace recovery. The data sets considered include inliers drawn around a low-dimensional subspace of a higher dimensional ambient space, and a possibly large portion of outliers that do not lie nearby this subspace. The proposed algorithm, which we refer to as Fast Median Subspace (FMS), is designed to robustly determine the underlying subspace of such data sets, while having lower computational complexity than existing methods. We prove convergence of the FMS iterates to a stationary point. Further, under a special model of data, FMS converges to a point which is near to the global minimum with overwhelming probability. Under this model, we show that the iteration complexity is globally bounded and locally $r$-linear. The latter theorem holds for any fixed fraction of outliers (less than 1) and any fixed positive distance between the limit point and the global minimum. Numerical experiments on synthetic and real data demonstrate its competitive speed and accuracy.
快速、鲁棒和非凸子空间恢复
本文提出了一种快速、非凸的鲁棒子空间恢复算法。考虑的数据集包括在高维环境空间的低维子空间周围绘制的内线,以及可能不在该子空间附近的很大一部分离群值。我们提出的算法,我们称之为快速中位数子空间(FMS),旨在鲁棒地确定这些数据集的底层子空间,同时具有比现有方法更低的计算复杂度。证明了FMS迭代到一个平稳点的收敛性。此外,在一种特殊的数据模型下,FMS以压倒性的概率收敛到一个接近全局最小值的点。在此模型下,我们证明了迭代复杂度是全局有界的,局部是线性的。后一个定理适用于任何固定的离群值分数(小于1)和任何固定的极限点与全局最小值之间的正距离。合成数据和实际数据的数值实验证明了该方法的速度和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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