Causal inference with latent variables from the Rasch model as outcomes

被引:10
|
作者
Rabbitt, Matthew P. [1 ]
机构
[1] USDA, Econ Res Serv, 355 E St SW, Washington, DC 20024 USA
关键词
Causal inference; Food insecurity; Item response theory; Latent regression; Rasch model; Selection; SNAP; MAXIMUM-LIKELIHOOD-ESTIMATION; FOOD INSECURITY; PARAMETERS; ITEM; ASSISTANCE; HOUSEHOLDS; HARDSHIPS; SECURITY; PROGRAM; ABILITY;
D O I
10.1016/j.measurement.2018.01.044
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
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.
引用
收藏
页码:193 / 205
页数:13
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