Interventions On-Call: Dynamic Adaptive Design in the 2015 National Survey of College Graduates

Author:

Coffey Stephanie1,Reist Benjamin2,Miller Peter V1

Affiliation:

1. US Census Bureau, 4600 Silver Hill Road, Washington, DC 20233, USA

2. National Agricultural Statistical Service, 1400 Independence Ave SW, Washington DC 20250, USA

Abstract

Abstract This article illustrates some effects of dynamic adaptive design in a large government survey. We present findings from the 2015 National Survey of College Graduates Adaptive Design Experiment, including results and discussion of sample representativeness, response rates, and cost. We also consider the effect of truncating data collection (examining alternative stopping rules) on these metrics. In this experiment, we monitored sample representativeness continuously and altered data collection procedures—increasing or decreasing contact effort—to improve it. Cases that were overrepresented in the achieved sample were assigned to more passive modes of data collection (web or paper) or withheld from the group of cases that received survey reminders, whereas underrepresented cases were assigned to telephone follow-ups. The findings suggest that a dynamic adaptive survey design can improve a data quality indicator (R-indicators) without increasing cost or reducing response rate. We also find that a dynamic adaptive survey design has the potential to reduce the length of the data collection period, control cost, and increase timeliness of data delivery, if sample representativeness is prioritized over increasing the survey response rate.

Funder

National Center for Science and Engineering Statistics

National Science Foundation

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Statistics, Probability and Uncertainty,Social Sciences (miscellaneous),Statistics and Probability

Reference29 articles.

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