最优精确最小二乘法秩最小化。

Shuo Xiang, Yunzhang Zhu, Xiaotong Shen, Jieping Ye
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引用次数: 0

摘要

在多元分析中,当需要矩阵的低秩结构和较小的估计误差时,就会出现秩最小化。秩最小化是非凸的,一般来说是 NP 难的,这给我们带来了一个重大挑战。在本文中,我们考虑了一种非凸最小二乘法,即在秩约束下最小化最小二乘损失函数。在计算上,我们开发了计算全局解以及整个正则化解路径的高效算法。从理论上讲,我们证明了我们的方法能准确地从噪声数据中重建oracle估计器。因此,与任何方法相比,我们的方法都能以最佳方式恢复真实秩,并带来比其对应方法更敏锐的参数估计。最后,我们通过模拟和从嘈杂背景中重建图像的方法证明了所提方法的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimal Exact Least Squares Rank Minimization.

Optimal Exact Least Squares Rank Minimization.

In multivariate analysis, rank minimization emerges when a low-rank structure of matrices is desired as well as a small estimation error. Rank minimization is nonconvex and generally NP-hard, imposing one major challenge. In this paper, we consider a nonconvex least squares formulation, which seeks to minimize the least squares loss function with the rank constraint. Computationally, we develop efficient algorithms to compute a global solution as well as an entire regularization solution path. Theoretically, we show that our method reconstructs the oracle estimator exactly from noisy data. As a result, it recovers the true rank optimally against any method and leads to sharper parameter estimation over its counterpart. Finally, the utility of the proposed method is demonstrated by simulations and image reconstruction from noisy background.

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