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Nonparametric errors in variables models with measurement errors on both sides of the equation

机译:方程两边都有测量误差的变量模型中的非参数误差

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Measurement errors are often correlated, as in surveys where respondent's biases or tendencies to err affect multiple reported variables. We extend Schennach (2007) to identify moments of the conditional distribution of a true Y given a true X when both are measured with error, the measurement errors in Y and X are correlated, and the true unknown model of Y given X has nonseparable model errors. After showing nonparametric identification, we provide a sieve generalized method of moments based estimator of the model, and apply it to nonparametric Engel curve estimation. In our application measurement errors on the expenditures of a good Y are by construction correlated with measurement errors in total expenditures X. This problem, which is present in many consumption data sets, has been ignored in most demand applications. We find that accounting for this problem casts doubt on Hildenbrand's (1994) "increasing dispersion" assumption. (C) 2015 Elsevier B.V. All rights reserved.
机译:测量误差通常是相关的,例如在调查中,受访者的偏见或错误倾向会影响多个报告的变量。我们扩展Schennach(2007)来确定给定真实X的真实Y的条件分布的矩,当它们都被测量误差时,Y和X的测量误差相关,并且给定X的Y的真实未知模型具有不可分离的模型错误。在显示了非参数识别之后,我们提供了一种基于模型的矩估计的筛分广义方法,并将其应用于非参数恩格尔曲线估计。在我们的应用程序中,商品Y的支出的测量误差通过构造与总支出X的测量误差相关。存在于许多消耗数据集中的此问题在大多数需求应用中已被忽略。我们发现,解决这个问题使人们对希尔登布兰德(1994)的“增加分散性”假设产生怀疑。 (C)2015 Elsevier B.V.保留所有权利。

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