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Structural measurement errors in nonseparable models

机译:不可分离模型中的结构测量误差

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This paper considers measurement error from a new perspective. In surveys, response errors are often caused by the fact that respondents recall past events and quantities imperfectly. We explore the consequences of limited recall for the identification of marginal effects. Our identification approach is entirely nonparametric, using Matzkin-type nonseparable models that nest a large class of potential structural models. We show that measurement error due to limited recall will generally exhibit nonstandard behavior, in particular be nonclassical and differential, even for left-hand side variables in linear models. We establish that information reduction by individuals is the critical issue for the seventy of recall measurement error. In order to detect information reduction, we propose a nonparametric test statistic. Finally, we propose bounds to address identification problems resulting from recall errors. We illustrate our theoretical findings using real-world data on food consumption.
机译:本文从一个新的角度来考虑测量误差。在调查中,答复错误通常是由于受访者不完全记得过去的事件和数量而造成的。我们探索有限召回对边际效应识别的后果。我们的识别方法完全是非参数化的,使用的Matzkin型不可分离模型嵌套了大量潜在的结构模型。我们显示,由于召回受限而导致的测量误差通常会表现出非标准行为,尤其是非经典和微分,即使对于线性模型中的左侧变量也是如此。我们确定,个人信息减少是70个召回测量误差的关键问题。为了检测信息减少,我们提出了非参数检验统计量。最后,我们提出了边界以解决召回错误导致的识别问题。我们使用有关食物消费的真实数据说明我们的理论发现。

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