数学
线性最小二乘法
趋同(经济学)
线性系统
基质(化学分析)
一般化
应用数学
算法
迭代法
最小二乘函数近似
数学优化
数学分析
统计
估计员
材料科学
奇异值分解
经济
复合材料
经济增长
作者
Frank Schöpfer,Dirk A. Lorenz,Lionel Tondji,Maximilian Winkler
标识
DOI:10.1016/j.laa.2022.07.003
摘要
The Extended Randomized Kaczmarz method is a well known iterative scheme which can find the Moore-Penrose inverse solution of a possibly inconsistent linear system and requires only one additional column of the system matrix in each iteration in comparison with the standard randomized Kaczmarz method. Also, the Sparse Randomized Kaczmarz method has been shown to converge linearly to a sparse solution of a consistent linear system. Here, we combine both ideas and propose an Extended Sparse Randomized Kaczmarz method. We show linear expected convergence to a sparse least squares solution in the sense that an extended variant of the regularized basis pursuit problem is solved. Moreover, we generalize the additional step in the method and prove convergence to a more abstract optimization problem. We demonstrate numerically that our method can find sparse least squares solutions of real and complex systems if the noise is concentrated in the complement of the range of the system matrix and that our generalization can handle impulsive noise.
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