Replication Data for: Quantifying bias from measurable and unmeasurable confounders across three domains of individual determinants of political preferences
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https://doi.org/10.7910/DVN/MGEN32
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资源简介:
A core part of political research is to identify how political preferences are shaped. The nature of these questions is such that robust causal identification is often difficult to achieve, and we are not seldom stuck with observational methods that we know have limited causal validity. The purpose of this paper is to measure the magnitude of bias stemming from both measurable and unmeasurable confounders across three broad domains of individual determinants of political preferences: socio-economic factors, moral values and psychological constructs. We leverage a unique combination of rich Swedish registry data for a large sample of identical twins, with a comprehensive battery of 34 political preference measures, and build a meta-analytical model comparing our most conservative observational (naive) estimates with discordant twin estimates. This allows us to infer the amount of bias from unobserved genetic and shared environmental factors that remains in the naive models for our predictors, while avoiding precision issues common in family-based designs. The results are sobering: in most cases, substantial bias remains in naive models. A rough heuristic is that about half of the effect size even in conservative observational estimates is composed of confounding. This Dataverse entry contains the code necessary to replicate the results from the paper in two different ways: the first requires applying for access to the raw individual level data, whereas the second requires only the intermediate datasets provided in this repository. See README.txt for a full description of both procedures.
创建时间:
2021-12-17



