Quantifying Bias from Measurable and Unmeasurable Confounders Across Three Domains of Individual Determinants of Political Preferences

IF 4.7 2区 社会学 Q1 POLITICAL SCIENCE Political Analysis Pub Date : 2022-02-22 DOI:10.1017/pan.2022.2
Rafael Ahlskog, Sven Oskarsson
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引用次数: 2

Abstract

Abstract 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.
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量化政治偏好个体决定因素三个领域中可测量和不可测量的混淆者的偏差
政治研究的一个核心部分是确定政治偏好是如何形成的。这些问题的本质是这样的,强大的因果识别往往很难实现,我们很少被我们知道因果有效性有限的观察方法所困住。本文的目的是在三个广泛的政治偏好的个人决定因素领域中测量可测量和不可测量的混杂因素所产生的偏见的程度:社会经济因素、道德价值观和心理结构。我们利用大量同卵双胞胎样本中丰富的瑞典注册数据的独特组合,以及34种政治偏好措施的综合组合,并建立了一个元分析模型,比较我们最保守的观察(朴素)估计与不一致的双胞胎估计。这使我们能够从未观察到的遗传和共享的环境因素中推断出偏差的数量,这些因素仍然存在于我们的预测器的幼稚模型中,同时避免了基于家庭的设计中常见的精度问题。结果是发人深省的:在大多数情况下,幼稚模型中仍然存在大量的偏见。一个粗略的启发是,即使在保守的观察估计中,约有一半的效应大小是由混淆组成的。
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来源期刊
Political Analysis
Political Analysis POLITICAL SCIENCE-
CiteScore
8.80
自引率
3.70%
发文量
30
期刊介绍: Political Analysis chronicles these exciting developments by publishing the most sophisticated scholarship in the field. It is the place to learn new methods, to find some of the best empirical scholarship, and to publish your best research.
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