A regularizing L-curve Lanczos method for underdetermined linear systems

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摘要

Many real applications give rise to the solution of underdetermined linear systems of equations with a very ill conditioned matrix A, whose dimensions are so large as to make solution by direct methods impractical or infeasible. Image reconstruction from projections is a well-known example of 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. A well-known method to determine it is given by the L-curve approach. We present an iterative method based on the Lanczos algorithm for inexpensively evaluating an approximation of the points on the L-curve and then determine the value of the optimal regularization parameter which lets us compute an approximate solution of the regularized system of equations.

论文关键词:Ill posed problems,Regularization,L-curve criterion,Lanczos algorithm

论文评审过程:Available online 17 July 2001.

论文官网地址:https://doi.org/10.1016/S0096-3003(99)00262-3