Solving Quadratic Equations via Amplitude-based Nonconvex Optimization

Vincent Monardo, Yuanxin Li, Yuejie Chi
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引用次数: 3

Abstract

In many signal processing tasks, one seeks to recover an r-column matrix object ${\mathbf{X}} \in {\mathbb{C}^{n \times r}}$ from a set of nonnegative quadratic measurements up to orthonormal transforms. Example applications include coherence retrieval in optical imaging and covariance sketching for high-dimensional streaming data. To this end, efficient nonconvex optimization methods are quite appealing, due to their computational efficiency and scalability to large-scale problems. There is a recent surge of activities in designing nonconvex methods for the special case r = 1, known as phase retrieval; however, very little work has studied the general rank-r setting. Motivated by the success of phase retrieval, in this paper we derive several algorithms which utilize the quadratic loss function based on amplitude measurements, including (stochastic) gradient descent and alternating minimization. Numerical experiments demonstrate their computational and statistical performances, highlighting the superior performance of stochastic gradient descent with appropriate mini-batch sizes.
基于幅值的非凸优化求解二次方程
在许多信号处理任务中,人们试图从一组非负二次测量到标准正交变换中恢复r列矩阵对象${\mathbf{X}} \ In {\mathbb{C}^{n \乘以r}}$。示例应用包括光学成像中的相干检索和高维流数据的协方差草图。为此,高效的非凸优化方法非常有吸引力,因为它们具有计算效率和大规模问题的可扩展性。最近在设计特殊情况r = 1的非凸方法方面的活动激增,称为相位检索;然而,研究一般的rank-r设置的工作很少。在相位恢复成功的激励下,本文推导了几种利用基于幅度测量的二次损失函数的算法,包括(随机)梯度下降和交替最小化。数值实验证明了它们的计算和统计性能,突出了在适当的小批大小下随机梯度下降的优越性能。
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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