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Assessing the Relative Performance of Penalty and Non-penalty Estimators in a Partially Linear Model

机译:评估部分线性模型中惩罚和非惩罚估计的相对绩效

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We investigated the linear shrinkage and shrinkage pretest estimators in a partially linear model, when it is a priori suspected that the regression coefficient may be restricted to a subspace. Using Monte Carlo simulations, we compared their performance with those of some penalty estimators. The proposed estimators were more efficient than the penalty estimators when the number of non-significant predictors was large. The shrinkage pretest estimator is suggested for practical applications, since its performance was robust against the reliability of the restriction. The proposed estimators were also applied to a real dataset to confirm their practicality.
机译:我们调查了部分线性模型中的线性收缩和收缩预测估计,当它是先验的先验时,回归系数可能仅限于子空间。 使用Monte Carlo模拟,我们将其表现与一些惩罚估算者的表现进行了比较。 当非重大预测因子的数量大时,拟议的估算比罚款估计更有效。 为实际应用提出了收缩预测估算器,因为其性能对限制可靠性稳健。 建议的估算者也适用于真实数据集以确认他们的实用性。

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