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Using the Predicted Responses from List Experiments as Explanatory Variables in Regression Models
Author(s) -
Kosuke Imai,
Bethany Park,
Kenneth F. Greene
Publication year - 2014
Publication title -
political analysis
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.953
H-Index - 69
eISSN - 1476-4989
pISSN - 1047-1987
DOI - 10.1093/pan/mpu017
Subject(s) - estimator , respondent , computer science , econometrics , regression analysis , linear regression , statistics , multivariate statistics , range (aeronautics) , regression , machine learning , mathematics , engineering , political science , law , aerospace engineering
The list experiment, also known as the item count technique, is becoming increasingly popular as a survey methodology for eliciting truthful responses to sensitive questions. Recently, multivariate regression techniques have been developed to predict the unobserved response to sensitive questions using respondent characteristics. Nevertheless, no method exists for using this predicted response as an explanatory variable in another regression model. We address this gap by first improving the performance of a naive two-step estimator. Despite its simplicity, this improved two-step estimator can only be applied to linear models and is statistically inefficient. We therefore develop a maximum likelihood estimator that is fully efficient and applicable to a wide range of models. We use a simulation study to evaluate the empirical performance of the proposed methods. We also apply them to the Mexico 2012 Panel Study and examine whether vote-buying is associated with increased turnout and candidate approval. The proposed methods are implemented in open-source software.

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