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首页> 外文期刊>SIAM Journal on Numerical Analysis >Convergence of a regularized euclidean residual algorithm for nonlinear least-squares
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Convergence of a regularized euclidean residual algorithm for nonlinear least-squares

机译:非线性最小二乘的正则欧氏残差算法的收敛性

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The convergence properties of the new regularized Euclidean residual method for solving general nonlinear least-squares and nonlinear equation problems are investigated. This method, derived from a proposal by Nesterov [Optim. Methods Softw., 22 (2007), pp. 469-483], uses a model of the objective function consisting of the unsquared Euclidean linearized residual regularized by a quadratic term. At variance with previous analysis, its convergence properties are here considered without assuming uniformly nonsingular globally Lipschitz continuous Jacobians nor an exact sub-problem solution. It is proved that the method is globally convergent to first-order critical points and, under stronger assumptions, to roots of the underlying system of nonlinear equations. The rate of convergence is also shown to be quadratic under stronger assumptions.
机译:研究了用于解决一般非线性最小二乘和非线性方程问题的新的正则欧几里得残差法的收敛性。此方法源自Nesterov的建议[Optim。方法,Softw。,22(2007),第469-483页]使用目标函数模型,该模型由通过二次项正则化的非平方欧几里得线性化残差组成。与以前的分析有所不同,在这里考虑其收敛性时,无需假设全局一致的奇异Lipschitz连续Jacobian算子,也不需要精确的子问题解。证明了该方法在全局收敛到一阶临界点,并且在更强的假设下,收敛到非线性方程组基础系统的根。在更强的假设下,收敛速度也显示为二次方。

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