| Literature DB >> 34092894 |
James Wagner1, Brady T West1, Michael R Elliott1, Stephanie Coffey2.
Abstract
Responsive survey designs rely upon incoming data from the field data collection to optimize cost and quality tradeoffs. In order to make these decisions in real-time, survey managers rely upon monitoring tools that generate proxy indicators for cost and quality. There is a developing literature on proxy indicators for the risk of nonresponse bias. However, there is very little research on proxy indicators for costs and almost none aimed at predicting costs under alternative design strategies. Predictions of survey costs and proxy error indicators can be used to optimize survey designs in real time. Using data from the National Survey of Family Growth, we evaluate alternative modeling strategies aimed at predicting survey costs (specifically, interviewer hours). The models include multilevel regression (with random interviewer effects) and Bayesian Additive Regression Trees (BART).Entities:
Keywords: Survey cost models; machine learning
Year: 2020 PMID: 34092894 PMCID: PMC8174792 DOI: 10.2478/jos-2020-0043
Source DB: PubMed Journal: J Off Stat ISSN: 0282-423X Impact factor: 0.920