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Statistical inference using a weighted difference-based series approach for partially linear regression models

机译:使用基于加权差异的序列方法的部分线性回归模型的统计推断

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摘要

Partially linear regression models with fixed effects are useful tools for making econometric analyses and normalizing microarray data. Baltagi and Li (2002) [7] proposed a computation friendly difference-based series estimation (DSE) for them. We show that the DSE is not asymptotically efficient in most cases and further propose a weighted difference-based series estimation (WDSE). The weights in it do not involve any unknown parameters. The asymptotic properties of the resulting estimators are established for both balanced and unbalanced cases, and it is shown that they achieve a semiparametric efficient boundary. Additionally, we propose a variable selection procedure for identifying significant covariates in the parametric part of the semiparametric fixed-effects regression model. The method is based on a combination of the nonconcave penalization (Fan and Li, 2001 [13]) and weighted difference-based series estimation techniques. The resulting estimators have the oracle property; that is, they can correctly identify the true model as if the true model (the subset of variables with nonvanishing coefficients) were known in advance. Simulation studies are conducted and an application is given to demonstrate the finite sample performance of the proposed procedures.
机译:具有固定影响的部分线性回归模型是进行计量经济分析和标准化微阵列数据的有用工具。 Baltagi和Li(2002)[7]为他们提出了一种基于计算友好的基于差异的序列估计(DSE)。我们证明DSE在大多数情况下不是渐近有效的,并进一步提出了基于加权差异的序列估计(WDSE)。其中的权重不涉及任何未知参数。建立了所得估计量在渐近和不平衡情况下的渐近性质,并表明它们达到了半参数有效边界。此外,我们提出了一种变量选择程序,用于识别半参数固定效应回归模型的参数部分中的重要协变量。该方法基于非凹惩罚(Fan和Li,2001 [13])和基于加权差异的序列估计技术的组合。结果估计量具有oracle属性;也就是说,他们可以正确识别真实模型,就像事先知道真实模型(具有不变系数的变量的子集)一样。进行了仿真研究,并给出了应用来证明所提出程序的有限样本性能。

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