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Identification of average marginal effects under misspecification when covariates are normal

机译:当协变量正常时,在错误指定下识别平均边际效应

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A previously known result in the econometrics literature is that when covariates of an underlying data generating process are jointly normally distributed, estimates from a nonlinear model that is misspecified as linear can be interpreted as average marginal effects. This has been shown for models with exogenous covariates and separability between covariates and errors. In this paper, we extend this identification result to a variety of more general cases, in particular for combinations of separable and nonseparable models under both exogeneity and endogeneity. So long as the underlying model belongs to one of these large classes of data generating processes, our results show that nothing else must be known about the true DGP-beyond normality of observable data, a testable assumption-in order for linear estimators to be interpretable as average marginal effects. We use simulation to explore the performance of these estimators using a misspecified linear model and show they perform well when the data are normal but can perform poorly when this is not the case.
机译:计量经济学文献中的先前已知结果是,当基础数据生成过程的协变量共同正态分布时,来自错误指定为线性的非线性模型的估计值可以解释为平均边际效应。对于具有外部协变量以及协变量和误差之间可分离性的模型,这已显示出来。在本文中,我们将识别结果扩展到更多更一般的情况下,特别是对于外生性和内生性下可分离和不可分离模型的组合。只要基础模型属于这些大类数据生成过程中的一种,我们的结果表明,除了可观察数据的正态性,可检验的假设之外,对于真正的DGP无需了解其他任何知识,以便线性估计量可以解释作为平均边际效应。我们使用模拟方法通过错误指定的线性模型来探索这些估算器的性能,并显示它们在数据正常时表现良好,但在情况并非如此时表现不佳。

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