一种新颖的非凸松弛法,用于完成非精确观测数据的低库矩阵

IF 2.6 1区 数学 Q1 MATHEMATICS, APPLIED SIAM Journal on Optimization Pub Date : 2024-07-02 DOI:10.1137/22m1543653
Yan Li, Liping Zhang
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引用次数: 0

摘要

SIAM 优化期刊》,第 34 卷第 3 期,第 2378-2410 页,2024 年 9 月。 摘要近年来,矩阵补全已成为数据科学的主要概念之一。在实际应用的数据采集过程中,除了数据缺失外,观测到的数据也可能不准确。本文关注的就是这种不精确观测数据的矩阵补全问题,它可以建模为一个秩最小化问题。我们采用核规范和 Frobenius 规范之差作为秩函数的近似值,采用 Tikhonov 型正则化来保留原始数据的固有特征并控制非精确观测产生的振荡,然后为这种低秩矩阵补全建立了一个新的非光滑和非凸松弛模型。我们提出了一种新的加速近似梯度型算法来解决非光滑和非凸最小化问题,并证明所生成的序列是有界的,且全局收敛于我们模型的临界点。此外,收敛率是通过 Kurdyka-Łojasiewicz 属性给出的。我们在室内定位系统的视觉图像和接收信号强度指纹数据上评估了我们的模型和方法。数值实验表明,我们的方法优于一些最先进的方法,同时也验证了 Tikhonov 型正则化的有效性。
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A Novel Nonconvex Relaxation Approach to Low-Rank Matrix Completion of Inexact Observed Data
SIAM Journal on Optimization, Volume 34, Issue 3, Page 2378-2410, September 2024.
Abstract. In recent years, matrix completion has become one of the main concepts in data science. In the process of data acquisition in real applications, in addition to missing data, observed data may be inaccurate. This paper is concerned with such matrix completion of inexact observed data which can be modeled as a rank minimization problem. We adopt the difference of the nuclear norm and the Frobenius norm as an approximation of the rank function, employ Tikhonov-type regularization to preserve the inherent characteristics of original data and control oscillation arising from inexact observations, and then establish a new nonsmooth and nonconvex relaxation model for such low-rank matrix completion. We propose a new accelerated proximal gradient–type algorithm to solve the nonsmooth and nonconvex minimization problem and show that the generated sequence is bounded and globally converges to a critical point of our model. Furthermore, the rate of convergence is given via the Kurdyka–Łojasiewicz property. We evaluate our model and method on visual images and received signal strength fingerprint data in an indoor positioning system. Numerical experiments illustrate that our approach outperforms some state-of-the-art methods, and also verify the efficacy of the Tikhonov-type regularization.
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来源期刊
SIAM Journal on Optimization
SIAM Journal on Optimization 数学-应用数学
CiteScore
5.30
自引率
9.70%
发文量
101
审稿时长
6-12 weeks
期刊介绍: The SIAM Journal on Optimization contains research articles on the theory and practice of optimization. The areas addressed include linear and quadratic programming, convex programming, nonlinear programming, complementarity problems, stochastic optimization, combinatorial optimization, integer programming, and convex, nonsmooth and variational analysis. Contributions may emphasize optimization theory, algorithms, software, computational practice, applications, or the links between these subjects.
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