Abstract

Random digit dialing (RDD) telephone sampling, although experiencing declining response rates, remains one of the most accurate and cost-effective data collection methods for generating national population-based estimates. Such methods, however, are inefficient when sampling hard-to-reach populations because the costs of recruiting sufficient sample sizes to produce reliable estimates tend to be cost prohibitive. The authors implemented a novel respondent-driven sampling (RDS) approach to oversample cigarette smokers and lesbian, gay, bisexual, and transgender (LGBT) people. The new methodology selects RDS referrals or seeds from a probability-based RDD sampling frame and treats the social networks as clusters in the weighting and analysis, thus eliminating the intricate assumptions of RDS. The authors refer to this approach as RDD+RDS. In 2016 and 2017, a telephone survey was conducted on tobacco-related topics with a national sample of 4,208 U.S. adults, as well as 756 referral-based respondents. The RDD+RDS estimates were comparable with stand-alone RDD estimates, suggesting that the addition of RDS responses from social networks improved the precision of the estimates without introducing significant bias. The authors also conducted an experiment to determine whether the number of recruits would vary on the basis of how the RDS recruitment question specified the recruitment population (closeness of relationship, time since last contact, and LGBT vs. tobacco user), and significant differences were found in the number of referrals provided on the basis of question wording. The RDD+RDS sampling approach, as an adaptation of standard RDD methodology, is a practical tool for survey methodologists that provides an efficient strategy for oversampling rare or elusive populations.

Highlights

  • Random digit dialing (RDD) telephone sampling, experiencing declining response rates, remains one of the most accurate and cost-effective data collection methods for generating national populationbased estimates

  • Sample size comparisons between RDD and RDD+respondent-driven sampling (RDS) demonstrated that our oversampling approach was successful

  • Our results show that RDD+RDS estimates are on par with RDD and national estimates but with increased precision due to the larger sample sizes generated in the RDD+RDS approach

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Summary

Introduction

Random digit dialing (RDD) telephone sampling, experiencing declining response rates, remains one of the most accurate and cost-effective data collection methods for generating national populationbased estimates. Such methods, are inefficient when sampling hard-to-reach populations because the costs of recruiting sufficient sample sizes to produce reliable estimates tend to be cost prohibitive. Ever since telephone coverage surpassed 90 percent in the late 1960s, researchers have chosen random digit dialing (RDD) methodology as one of the most accurate and cost-effective approaches for generating national population-based estimates. RDD methods tend to be inefficient when oversampling rare or elusive populations, because the costs of recruiting sufficient sample sizes to produce reliable estimates far exceed most research budgets. It would be preferable to retain a probabilistic framework by sampling the seeds from a known design

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