High Dimensional Semiparametric Moment Restriction Models

Chaohua Dong, Jiti Gao, O. Linton
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引用次数: 6

Abstract

We consider nonlinear moment restriction semiparametric models where both the dimension of the parameter vector and the number of restrictions are divergent with sample size and an unknown smooth function is involved. We propose an estimation method based on the sieve generalized method of moments (sieve-GMM). We establish consistency and asymptotic normality for the estimated quantities when the number of parameters increases modestly with sample size. We also consider the case where the number of potential parameters/covariates is very large, i.e., increases rapidly with sample size, but the true model exhibits sparsity. We use a penalized sieve GMM approach to select the relevant variables, and establish the oracle property of our method in this case. We also provide new results for inference. We propose several new test statistics for the over-identification and establish their large sample properties. We provide a simulation study and an application to data from the NLSY79 used by Carneiro et al. [14].
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高维半参数矩约束模型
考虑参数向量的维数和约束数随样本量的增大而发散,且涉及未知光滑函数的非线性矩约束半参数模型。提出了一种基于筛广义矩法的估计方法(筛- gmm)。当参数数量随样本量适度增加时,我们建立了估计量的一致性和渐近正态性。我们还考虑了潜在参数/协变量的数量非常大的情况,即随着样本量的增加而迅速增加,但真正的模型显示稀疏性。我们使用惩罚筛选GMM方法来选择相关变量,并在这种情况下建立我们的方法的oracle属性。我们还为推理提供了新的结果。我们提出了几种新的检验统计量用于过度识别,并建立了它们的大样本性质。我们对Carneiro等人使用的NLSY79数据进行了模拟研究和应用。
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