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Penalized least absolute deviations estimation for nonlinear model with change-points

机译:具有变点非线性模型的惩罚最小绝对偏差估计。

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This paper studies the asymptotic properties of a smoothed least absolute deviations estimator in a nonlinear parametric model with multiple change-points occurring at the unknown times with independent and identically distributed errors. The model is nonlinear in the sense that between two successive change-points the regression function is nonlinear into respect to parameters. It is shown via Monte Carlo simulations that its performance is competitive with that of least absolute deviations estimator and it is more efficient than the least squares estimator, particularly in the presence of the outlier points. If the number of change-points is unknown, an estimation criterion for this number is proposed. Interest of this method is that the objective function is approximated by a differentiable function and if the model contains outliers, it detects correctly the location of the change-points.
机译:本文研究了非线性参数模型中平滑最小绝对偏差估计量的渐近性质,该非线性参数模型具有在未知时间出现的具有独立且均等分布误差的多个变化点。在两个连续变化点之间,回归函数相对于参数而言是非线性的,因此该模型是非线性的。通过蒙特卡洛模拟显示,其性能与最小绝对偏差估计器的性能相竞争,并且比最小二乘估计器更有效,特别是在存在离群点的情况下。如果改变点的数目未知,则提出该数目的估计标准。此方法的兴趣在于,目标函数由可微函数逼近,并且如果模型包含异常值,则它可以正确检测变化点的位置。

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