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Globally consistent model selection in semi-parametric additive coefficient models

机译:半参数相加系数模型中的全局一致模型选择

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摘要

We study a penalised polynomial spline (PPS) method for model selection in additive coefficient models. It approximates nonparametric coefficient functions by polynomial splines and minimises the sum of squared errors subject to an additive penalty on the norms of spline functions. For non-convex penalty functions such as smoothly clipped absolute deviation (SCAD) penalty, we investigate the asymptotic properties of the global solution of the non-convex objective function. We establish explicitly that the oracle estimator is the global solution with probability approaching one. Therefore, the global solution enjoys both model estimation and selection consistency. In the literature, the asymptotic properties of local solutions rather than global solutions are well-established for non-convex penalty functions. Our theoretical results broaden the traditional understanding of the PPS method. Extensive Monte Carlo simulation studies show the proposed method performs well numerically. We also illustrate the use of the proposed method by analysing a housing price data set.
机译:我们研究了加性系数模型中模型选择的惩罚性多项式样条(PPS)方法。它通过多项式样条曲线逼近非参数系数函数,并在对样条曲线函数范数施加加法惩罚的情况下最小化平方误差之和。对于非凸惩罚函数,例如平滑限幅绝对偏差(SCAD)惩罚,我们研究了非凸目标函数的整体解的渐近性质。我们明确确定oracle估计量是概率接近1的全局解。因此,全局解决方案同时具有模型估计和选择一致性。在文献中,对于非凸罚函数,局部解决方案而不是整体解决方案的渐近性质是公认的。我们的理论结果拓宽了对PPS方法的传统理解。大量的蒙特卡洛模拟研究表明,该方法在数值上表现良好。我们还通过分析房屋价格数据集说明了所提出方法的使用。

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