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Levenberg-Marquardt methods with strong local convergence properties for solving nonlinear equations with convex constraints

机译:具有强局部收敛性的Levenberg-Marquardt方法用于求解具有凸约束的非线性方程

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摘要

We consider the problem of finding a solution of a constrained (and not necessarily square) system of equations, i.e., we consider systems of nonlinear equations and want to find a solution that belongs to a certain feasible set. To this end, we present two Levenberg-Marquardt-type algorithms that differ in the way they compute their search directions. The first method solves a strictly convex minimization problem at each iteration, whereas the second one solves only one system of linear equations in each step. Both methods are shown to converge locally quadratically under an error bound assumption that is much weaker than the standard nonsingularity condition. Both methods can be globalized in an easy way. Some numerical results for the second method indicate that the algorithm works quite well in practice. (C) 2004 Elsevier B.V. All rights reserved.
机译:我们考虑了找到一个受约束的(不一定是正方形的)方程组的解的问题,即我们考虑了非线性方程组,并想找到一个属于某个可行集的解。为此,我们提出了两种Levenberg-Marquardt类型的算法,它们在计算搜索方向的方式上有所不同。第一种方法在每次迭代中求解严格的凸极小化问题,而第二种方法在每个步骤中仅求解一个线性方程组。两种方法都显示出在误差界限假设下局部二次收敛,该误差界限假设比标准非奇点条件弱得多。两种方法都可以轻松实现全球化。第二种方法的一些数值结果表明该算法在实践中效果很好。 (C)2004 Elsevier B.V.保留所有权利。

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