Survey Methodology and Nonresponse Open access Peer reviewed

Re-Expressing the Proxy Pattern-Mixture Model as a Selection Model to Assist with Sensitivity Analysis

Seth Adarkwah Yiadom, Rebecca Andridge

Journal of Official Statistics | Jun 23, 2026

Abstract

Abstract

Proxy pattern-mixture models (PPMMs) have previously been proposed as a model-based framework for assessing the potential for nonignorable nonresponse in sample surveys and nonignorable selection in nonprobability samples. One defining feature of the PPMM is the single sensitivity parameter, ϕ , that ranges from 0 to 1 and governs the degree of departure from ignorability. While this sensitivity parameter is attractive in its simplicity, it may also be of interest to describe departures from ignorability in terms of how the odds of response (or selection) depend on the outcome being measured. In this paper, we re-express the PPMM as a selection model in order to better understand the underlying assumptions of the PPMM and the implied effect of the outcome on nonresponse (or selection). The selection model that corresponds to the PPMM is a quadratic function of the survey outcome and proxy variable, and the magnitude of the effect depends on the value of the sensitivity parameter, ϕ (missingness/selection mechanism), the differences in the proxy means and standard deviations for the respondent and nonrespondent populations, and the strength of the proxy as measured by the correlation between the outcome and the proxy in the respondent/selected sample. Large values of ϕ (beyond 0 . 5 ) may result in unrealistic selection mechanisms, and the corresponding selection model can be used to establish more realistic bounds on ϕ . We illustrate the results using a home pricing dataset extracted from the China Family Panel Studies.

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Authors

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Seth Adarkwah Yiadom

first | The Ohio State University

Rebecca Andridge

last | The Ohio State University | ORCID 0000-0001-9991-9647

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Citation

BibTeX

@article{Yiadom2026Expressing,
  title = {Re-Expressing the Proxy Pattern-Mixture Model as a Selection Model to Assist with Sensitivity Analysis},
  author = {Seth Adarkwah Yiadom and Rebecca Andridge},
  journal = {Journal of Official Statistics},
  year = {2026},
  doi = {10.1177/0282423x261457501},
  url = {https://doi.org/10.1177/0282423x261457501}
}

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