z-logo
open-access-imgOpen Access
What Do You Think? Using Expert Opinion to Improve Predictions of Response Propensity Under a Bayesian Framework.
Author(s) -
Stephanie Coffey,
Brady T. West,
James Wagner,
Michael R. Elliott
Publication year - 2020
Publication title -
methoden, daten, analysen
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.301
H-Index - 2
eISSN - 2190-4936
pISSN - 1864-6956
DOI - 10.12758/mda.2020.05
Subject(s) - respondent , prior probability , bayesian probability , computer science , data collection , survey data collection , bayesian statistics , expert elicitation , data quality , expert opinion , data science , statistics , bayesian inference , operations research , artificial intelligence , service (business) , mathematics , marketing , medicine , intensive care medicine , political science , law , business
Responsive survey designs introduce protocol changes to survey operations based on accumulating paradata. Case-level predictions, including response propensity, can be used to tailor data collection features in pursuit of cost or quality goals. Unfortunately, predictions based only on partial data from the current round of data collection can be biased, leading to ineffective tailoring. Bayesian approaches can provide protection against this bias. Prior beliefs, which are generated from data external to the current survey implementation, contribute information that may be lacking from the partial current data. Those priors are then updated with the accumulating paradata. The elicitation of the prior beliefs, then, is an important characteristic of these approaches. While historical data for the same or a similar survey may be the most natural source for generating priors, eliciting prior beliefs from experienced survey managers may be a reasonable choice for new surveys, or when historical data are not available. Here, we fielded a questionnaire to survey managers, asking about expected attempt-level response rates for different subgroups of cases, and developed prior distributions for attempt-level response propensity model coefficients based on the mean and standard error of their responses. Then, using respondent data from a real survey, we compared the predictions of response propensity when the expert knowledge is incorporated into a prior to those based on a standard method that considers accumulating paradata only, as well as a method that incorporates historical survey data.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here
Accelerating Research

Address

John Eccles House
Robert Robinson Avenue,
Oxford Science Park, Oxford
OX4 4GP, United Kingdom