The minimal-norm Gauss-Newton method and some of its regularized variants
[摘要] Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is used to reproduce the behavior of a physical system, the unknown parameters of the model can be estimated by fitting experimental observations by a least-squares approach. It is common to solve such problems by Newton's method or one of its variants such as the Gauss-Newton algorithm. In this paper, we study the computation of the minimal-norm solution to a nonlinear least-squares problem, as well as the case where the solution minimizes a suitable semi-norm. Since many important applications lead to severely ill-conditioned least-squares problems, we also consider some regularization techniques for their solution. Numerical experiments, both artificial and derived from an application in applied geophysics, illustrate the performance of the different approaches.
[发布日期] [发布机构]
[效力级别] [学科分类] 数学(综合)
[关键词] nonlinear least-squares;nonlinear inverse problem;regularization;Gauss-Newton method [时效性]