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A robust method based on LOVO functions for solving least squares problems

机译:一种基于Lovo功能的鲁棒方法,用于解决最小二乘问题

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摘要

The robust adjustment of nonlinear models to data is considered in this paper. When data comes from real experiments, it is possible that measurement errors cause the appearance of discrepant values, which should be ignored when adjusting models to them. This work presents a low order-value optimization (LOVO) version of the Levenberg-Marquardt algorithm, which is well suited to deal with outliers in fitting problems. A general algorithm is presented and convergence to stationary points is demonstrated. Numerical results show that the algorithm is successfully able to detect and ignore outliers without too many specific parameters. Parallel and distributed executions of the algorithm are also possible, allowing the use of larger datasets. Comparison against publicly available robust algorithms shows that the present approach is able to find better adjustments in well known statistical models.
机译:本文考虑了非线性模型对数据的鲁棒调整。 当数据来自真实实验时,测量误差可能会导致差异值的外观,在调整模型时应该忽略。 这项工作介绍了Levenberg-Marquardt算法的低价值优化(Lovo)版本,非常适合处理拟合问题的异常值。 向普通算法提出,并对静止点进行会聚。 数值结果表明,该算法成功地能够检测和忽略异常值,而不是太多的特定参数。 算法的并行和分布式执行也是可能的,允许使用较大的数据集。 对公共可用稳健算法的比较表明,本方法能够在众所周知的统计模型中找到更好的调整。

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