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首页> 外文期刊>Journal of business & economic statistics >Using Heteroscedasticity to Identify and Estimate Mismeasured and Endogenous Regressor Models
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Using Heteroscedasticity to Identify and Estimate Mismeasured and Endogenous Regressor Models

机译:使用异方差识别和估计错误度量的内生回归模型

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This article proposes a new method of obtaining identification in mismeasured regressor models, triangular systems, and simultaneous equation systems. The method may be used in applications where other sources of identification, such as instrumental variables or repeated measurements, are not available. Associated estimators take the form of two-stage least squares or generalized method of moments. Identification comes from a heteroscedastic covariance restriction that is shown to be a feature of many models of endogeneity or mismeasurement. Identification is also obtained for semiparametric partly linear models, and associated estimators are provided. Set identification bounds are derived for cases where point-identifying assumptions fail to hold. An empirical application estimating Engel curves is provided.
机译:本文提出了一种在度量错误的回归模型,三角系统和联立方程组中获得标识的新方法。该方法可用于无法使用其他识别源(例如仪器变量或重复测量)的应用中。相关估计量采用两阶段最小二乘法或广义矩量法的形式。鉴定来自异方差协方差限制,该限制被证明是许多内生性或度量错误模型的特征。还为半参数部分线性模型获得了标识,并提供了相关的估计量。对于点识别假设无法成立的情况,可以导出集合识别范围。提供了估算恩格尔曲线的经验应用。

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