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首页> 外文期刊>Journal of nonparametric statistics >Interquantile shrinkage in additive models
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Interquantile shrinkage in additive models

机译:加性模型中的分位数收缩

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摘要

In this paper, we investigate the commonality of nonparametric component functions among different quantile levels in additive regression models. We propose two fused adaptive group Least Absolute Shrinkage and Selection Operator penalties to shrink the difference of functions between neighbouring quantile levels. The proposed methodology is able to simultaneously estimate the nonparametric functions and identify the quantile regions where functions are unvarying, and thus is expected to perform better than standard additive quantile regression when there exists a region of quantile levels on which the functions are unvarying. Under some regularity conditions, the proposed penalised estimators can theoretically achieve the optimal rate of convergence and identify the true varying/unvarying regions consistently. Simulation studies and a real data application show that the proposed methods yield good numerical results.
机译:在本文中,我们研究了加性回归模型中不同分位数级别之间非参数分量函数的共性。我们提出了两个融合的自适应组最小绝对收缩和选择算子惩罚,以缩小相邻分位数级别之间的功能差异。所提出的方法能够同时估计非参数函数并确定函数不变的分位数区域,因此,当存在函数不变的分位数级别区域时,可以预期比标准加性分位数回归更好。在某些规律性条件下,所提出的惩罚估计量可以在理论上达到最佳收敛速度,并始终如一地识别出真实的变化/不变区域。仿真研究和实际数据应用表明,所提出的方法具有良好的数值效果。

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