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A regularizing Lanczos iteration method for underdetermined linear systems

机译:欠定线性系统的正则化Lanczos迭代方法

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This paper is concerned with the solution of underdetermined linear systems of equations with a very ill-conditioned matrix A, whose dimensions are so large to make solution by direct methods impractical or infeasible. Image reconstruction from projections often gives rise to such systems. In order to facilitate the computation of a meaningful approximate solution, we regularize the linear system, i.e., we replace it by a nearby system that is better conditioned. The amount of regularization is determined by a regularization parameter. Its optimal value is, in most applications, not known a priori. We present a new iterative method based on the Lanczos algorithm for determining a suitable value of the regularization parameter by the discrepancy principle and an approximate solution of the regularized system of equations.
机译:本文涉及条件极差的矩阵A的欠定线性方程组的求解,矩阵A的维数太大,以至于无法通过直接方法求解或不可行。通过投影进行图像重建通常会产生这样的系统。为了便于计算有意义的近似解,我们对线性系统进行了正则化,即用条件更好的附近系统替换了它。正则化的数量由正则化参数确定。在大多数应用中,其最佳值是先验未知的。我们提出了一种基于Lanczos算法的新迭代方法,该方法通过差异原理和正则方程组的近似解来确定正则化参数的合适值。

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