Replication Data for: Extending the Use and Prediction Precision of Subnational Public Opinion Estimation
收藏DataONE2018-12-11 更新2024-06-08 收录
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The comparative study of subnational units is on the rise. Multilevel regression and post-stratification (MrP) has become the standard method for estimating subnational public opinion. Unfortunately, MrP comes with stringent data demands. As a consequence, scholars cannot apply MrP in countries without detailed census data, and when such data is available, the modeling is restricted to a few variables. This article introduces multilevel regression with synthetic post-stratification (MrsP), which relaxes the data requirement of MrP to marginal distributions, substantially increases the prediction precision of the method, and extends its use to countries without census data. The findings of Monte Carlo, U.S., and Swiss analyses show that, using the same predictors, MrsP usually performs in standard applications as well as the currently used standard approach, and it is superior when additional predictors are modeled. The better performance and the more straight- forward implementation promise that MrsP will further stimulate subnational research.
创建时间:
2023-11-21



