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Semiparametric efficiency in GMM models with auxiliary data

机译:具有辅助数据的GMM模型中的半参数效率

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摘要

We study semiparametric efficiency bounds and efficient estimation of parameters defined through general moment restrictions with missing data. Identification relies on auxiliary data containing information about the distribution of the missing variables conditional on proxy variables that are observed in both the primary and the auxiliary database, when such distribution is common to the two data sets. The auxiliary sample can be independent of the primary sample, or can be a subset of it. For both cases, we derive bounds when the probability of missing data given the proxy variables is unknown, or known, or belongs to a correctly specified parametric family. We find that the conditional probability is not ancillary when the two samples are independent. For all cases, we discuss efficient semiparametric estimators. An estimator based on a conditional expectation projection is shown to require milder regularity conditions than one based on inverse probability weighting.
机译:我们研究了半参数效率界限和通过缺少数据的一般矩约束定义的参数的有效估计。标识依赖于辅助数据,该辅助数据包含有关丢失变量分布的信息,这些信息取决于在主数据库和辅助数据库中都观察到的代理变量,这是两个数据集所共有的。辅助样本可以独立于主要样本,也可以是其子集。对于这两种情况,当给定代理变量时丢失数据的概率未知,未知或属于正确指定的参数族时,我们得出边界。我们发现当两个样本独立时,条件概率不是辅助的。对于所有情况,我们讨论有效的半参数估计量。与基于逆概率加权的估计相比,基于条件的预期预测的估计所需的规则性条件更为温和。

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