Weighting and Its Consequences

Part 1: The Abstract
politics
Author

Mark Rieke

Published

February 14, 2025

In May, the American Association for Public Opinion Research (AAPOR) will be hosting their 80th annual conference in St. Louis. My abstract, Weighting and Its Consequences, was selected and I’ll be presenting at the conference. I’ll also be sharing the core idea of the material here over the next few months in a series of blog posts. The verbatim abstract is written below, but can be summarized in plain English:

Weighting and Its Consequences: Variance Reduction in Discrete Outcomes and Its Implications for Survey Aggregation

Relative to the unweighted estimate, weighting survey responses can reduce both the bias and variance of the population estimate when the weighting variables are highly correlated with both survey nonresponse and the outcome of interest. Little and Vartivarian (2005) highlight this effect for continuous survey outcomes. In discrete outcomes—such as binary or multi-way candidate choices in pre-election polls—a surprisingly high degree of correlation with the outcome is required for weighting to reduce variance relative to the unweighted estimate if differential nonresponse is present.

This has direct implications for election forecasters, poll aggregators, or researchers aggregating surveys more broadly. Well-regarded election models such as Linzer (2013), Kemp (2016), and The Economist (2020) model survey responses using a binomial likelihood while adjusting for potential sources of statistical bias, such as poll mode (Online Survey, Live Phone, etc.) or population (Likely Voters, Registered Voters, etc.). This parameterization, however, ignores the potential reduction in variance introduced by weighting and potentially inflates the uncertainty around the parameters measuring statistical bias.

In this study, I explore, via simulation, the degree to which weighting increases or decreases the variance in the population mean estimate across different levels of subgroup correlation with nonresponse and a binary outcome. Further, I demonstrate that researchers can improve the precision of parameter estimates in poll aggregation models by modeling the poll’s reported standard deviation directly via a normal (or beta with a mean-variance parameterization), rather than binomial, likelihood.

Citation

BibTeX citation:
@online{rieke2025,
  author = {Rieke, Mark},
  title = {Weighting and {Its} {Consequences}},
  date = {2025-02-14},
  url = {https://www.thedatadiary.net/posts/2025-02-15-aapor-01/},
  langid = {en}
}
For attribution, please cite this work as:
Rieke, Mark. 2025. “Weighting and Its Consequences.” February 14, 2025. https://www.thedatadiary.net/posts/2025-02-15-aapor-01/.

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