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FACTORIZATION APPROACH TO STRUCTURED LOW-RANK APPROXIMATION WITH APPLICATIONS

机译:结构化低秩逼近的分解方法及其应用

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摘要

We consider the problem of approximating an affinely structured matrix, for example, a Hankel matrix, by a low-rank matrix with the same structure. This problem occurs in system identification, signal processing, and computer algebra, among others. We impose the low rank by modeling the approximation as a product of two factors with reduced dimension. The structure of the low-rank model is enforced by introducing a penalty term in the objective function. The proposed local optimization algorithm is able to solve the weighted structured low-rank approximation problem, as well as to deal with the cases of missing or fixed elements. In contrast to approaches based on kernel representations (in the linear algebraic sense), the proposed algorithm is designed to address the case of small targeted rank. We compare it to existing approaches on numerical examples of system identification, approximate greatest common divisor problem, and symmetric tensor decomposition and demonstrate its consistently good performance.
机译:我们考虑通过具有相同结构的低秩矩阵来近似仿射结构矩阵(例如汉克尔矩阵)的问题。在系统识别,信号处理和计算机代数等中会出现此问题。我们通过将近似建模为两个具有减小尺寸的因子的乘积来施加低秩。低等级模型的结构是通过在目标函数中引入惩罚项来实现的。所提出的局部优化算法能够解决加权结构化低秩逼近问题,并且能够处理丢失或固定元素的情况。与基于核表示的方法(在线性代数意义上)相比,该算法旨在解决目标等级较小的情况。我们将其与系统识别的数值示例,近似最大公约数问题和对称张量分解的现有方法进行比较,并证明其始终如一的良好性能。

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