具有稀疏噪声和缺失值的低阶张量补全问题的迭代算法

IF 1.8 3区 数学 Q1 MATHEMATICS Numerical Linear Algebra with Applications Pub Date : 2023-12-17 DOI:10.1002/nla.2544
Jianheng Chen, Wen Huang
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引用次数: 0

摘要

稳健的低秩张量补全在多维数据分析中发挥着重要作用,可抵御稀疏噪声、缺失条目等不同劣化情况,在图像处理和计算机视觉中有着广泛的应用。本文提出了低秩张量补全问题的优化模型,并开发了一种块坐标下降算法来求解该模型。研究表明,对于其中一个子问题,存在闭式解,而对于另一个子问题,则使用黎曼共轭梯度算法。特别是,当所有元素都已知,即没有缺失值时,块坐标下降就会简化,即两个子问题都有闭式解。收敛分析的建立不需要精确求解后一个子问题。数值实验表明,所提出的模型和算法是可行和有效的。
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An iterative algorithm for low-rank tensor completion problem with sparse noise and missing values
Robust low-rank tensor completion plays an important role in multidimensional data analysis against different degradations, such as sparse noise, and missing entries, and has a variety of applications in image processing and computer vision. In this paper, an optimization model for low-rank tensor completion problems is proposed and a block coordinate descent algorithm is developed to solve this model. It is shown that for one of the subproblems, the closed-form solution exists and for the other, a Riemannian conjugate gradient algorithm is used. In particular, when all elements are known, that is, no missing values, the block coordinate descent is simplified in the sense that both subproblems have closed-form solutions. The convergence analysis is established without requiring the latter subproblem to be solved exactly. Numerical experiments illustrate that the proposed model with the algorithm is feasible and effective.
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来源期刊
CiteScore
3.40
自引率
2.30%
发文量
50
审稿时长
12 months
期刊介绍: Manuscripts submitted to Numerical Linear Algebra with Applications should include large-scale broad-interest applications in which challenging computational results are integral to the approach investigated and analysed. Manuscripts that, in the Editor’s view, do not satisfy these conditions will not be accepted for review. Numerical Linear Algebra with Applications receives submissions in areas that address developing, analysing and applying linear algebra algorithms for solving problems arising in multilinear (tensor) algebra, in statistics, such as Markov Chains, as well as in deterministic and stochastic modelling of large-scale networks, algorithm development, performance analysis or related computational aspects. Topics covered include: Standard and Generalized Conjugate Gradients, Multigrid and Other Iterative Methods; Preconditioning Methods; Direct Solution Methods; Numerical Methods for Eigenproblems; Newton-like Methods for Nonlinear Equations; Parallel and Vectorizable Algorithms in Numerical Linear Algebra; Application of Methods of Numerical Linear Algebra in Science, Engineering and Economics.
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