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Adaptive LASSO model selection in a multiphase quantile regression

机译:多相分位数回归中的自适应LASSO模型选择

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摘要

We propose a general adaptive LASSO method for a quantile regression model. Our method is very interesting when we know nothing about the first two moments of the model error. We first prove that the obtained estimators satisfy the oracle properties, which involves the relevant variable selection without using hypothesis test. Next, we study the proposed method when the (multiphase) model changes to unknown observations called change-points. Convergence rates of the change-points and of the regression parameter estimators in each phase are found. The sparsity of the adaptive LASSO quantile estimators of the regression parameters is not affected by the change-points estimation. If the number of phases is unknown, a consistent criterion is proposed. Numerical studies by Monte Carlo simulations show the performance of the proposed method, compared to other existing methods in the literature, for models with a single phase or for multiphase models. The adaptive LASSO quantile method performs better than known variable selection methods, as the least squared method with adaptive LASSO penalty, -method with LASSO-type penalty and quantile method with SCAD penalty.
机译:我们提出了一种适用于分位数回归模型的通用自适应LASSO方法。当我们对模型错误的前两个时刻一无所知时,我们的方法非常有趣。我们首先证明所获得的估计量满足预言性,这涉及不使用假设检验而进行的相关变量选择。接下来,我们研究当(多相)模型变为未知观测值(称为变化点)时提出的方法。找到每个阶段的变化点和回归参数估计量的收敛速度。回归参数的自适应LASSO分位数估计器的稀疏度不受更改点估计的影响。如果相数未知,则提出一致的标准。通过蒙特卡洛模拟进行的数值研究表明,与文献中的其他现有方法相比,该方法对于单相或多相模型的性能。自适应LASSO分位数方法的性能优于已知的变量选择方法,具有自适应LASSO罚分的最小二乘法,具有LASSO型罚分的方法和具有SCAD罚分的分位数方法。

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