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Causal inference with latent variables from the Rasch model as outcomes

机译:与Rasch模型的因果推断与RASCH模型为结果

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This article discusses and compares several methods for estimating the parameters of a latent regression model when one of the explanatory variables is an endogenous binary (treatment) variable. Traditional methods based on two-stage least squares and the Tobit selection model where the dependent variable is an estimate of the latent variable from the Rasch model are compared to the behavioral Rasch selection model. The properties of these methods are examined using simulated data and empirical examples are included to demonstrate the usefulness of the behavioral Rasch selection model for research in the social sciences. The simulations suggest the latent regression model parameters are more accurately and precisely estimated by the behavioral Rasch selection model than by two-stage least squares or the Tobit selection model. The empirical examples demonstrate the importance of addressing endogenous explanatory variables in latent regressions for Item Response Theory (IRT) models when estimating causal differences in the latent variable or examining differential item functioning.
机译:本文讨论并比较了估计潜伏回归模型参数的方法,当其中一个解释变量是内源二进制(处理)变量时。与行为Rasch选择模型进行比较了基于两级最小二乘和托盘选择模型的基于两级最小二乘和Tobit选择模型。使用模拟数据检查这些方法的性质,并且包括经验实施例以证明行为Rasch选择模型在社会科学研究中的有用性。模拟表明,由行为Rasch选择模型更准确且精确地估计了潜伏回归模型的参数,而不是通过两阶段最小二乘或Tobit选择模型来估计。经验实例证明了在估算潜伏变量的因果差异或检查差分项目的因果差时,解决项目响应理论(IRT)模型的潜在回归中的内源性解释变量的重要性。

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