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带有干扰泛函和复杂调查数据的增强两步估计方程

Augmented two-step estimating equations with nuisance functionals and complex survey data

Econometrics Journal · 2023
被引 1
人大 BABS 3

中文导读

针对复杂调查数据中带有干扰泛函的统计推断问题,提出一种增强估计方程方法,使第二步估计满足Neyman正交性,从而保证Wilks定理成立并达到半参数效率界。

Abstract

Summary Statistical inference in the presence of nuisance functionals with complex survey data is an important topic in social and economic studies. The Gini index, Lorenz curves, and quantile shares are among the commonly encountered examples. The nuisance functionals are usually handled by a plug-in nonparametric estimator and the main inferential procedure can be carried out through a two-step generalized empirical likelihood method. Unfortunately, the resulting inference is not efficient and the nonparametric version of the Wilks’ theorem breaks down even under simple random sampling. We propose an augmented estimating equations method with nuisance functionals and complex surveys. The second step augmented estimating functions obey the Neyman orthogonality condition and automatically handle the impact of the first step plug-in estimator, and the resulting estimator of the main parameters of interest is invariant to the first step method. More importantly, the generalized empirical likelihood-based Wilks’ theorem holds for the main parameters of interest under the design-based framework for commonly used survey designs, and the maximum generalized empirical likelihood estimators achieve the semiparametric efficiency bound. Performances of the proposed methods are demonstrated through simulation studies and an application using the dataset from the New York City Social Indicators Survey.

经济计量学非参数统计调查数据分析经验似然