We consider large-scale nonlinear least squares problems with sparse residuals, each of them depending on a small number of variables. A decoupling procedure which results in a splitting of the original problems into a sequence of independent problems of smaller sizes is proposed and analysed. The smaller size problems are modified in a way that offsets the error made by disregarding dependencies that allow us to split the original problem. The resulting method is a modification of the Levenberg-Marquardt method with smaller computational costs. Global convergence is proved as well as local linear convergence under suitable assumptions on sparsity. The method is tested on the network localization simulated problems with up to one million variables and its efficiency is demonstrated.
翻译:我们认为,大规模的非线性最小方形问题与稀有的残留物存在大量非线性最低方形问题,每个方形问题都取决于少量变量。提出和分析一种脱钩程序,将原有问题分成一系列规模较小的独立问题。较小的规模问题被修改,以抵消因忽视依赖关系而导致的错误,从而使我们能够分解原有问题。由此产生的方法就是修改Levenberg-Marquardt方法,降低计算成本。全球趋同证明,并且根据关于宽度的适当假设将局部线性趋同。该方法在网络化模拟问题时测试了多达100万个变量,并展示了其效率。