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https://doi.org/10.18148/srm/2010.v4i1.3037

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Reduction of nonresponse bias through case prioritization

Reduktion des Nonresponsebias durch Priorisierung
[journal article]

Peytchev, Andy
Riley, Sarah
Rosen, Jeff
Murphy, Joe
Lindblad, Mark

Abstract

"How response rates are increased can determine the remaining nonresponse bias in estimates. Studies often target sample members that are most likely to be interviewed to maximize response rates. Instead, the authors suggest targeting likely nonrespondents from the onset of a study with a different ... view more

"How response rates are increased can determine the remaining nonresponse bias in estimates. Studies often target sample members that are most likely to be interviewed to maximize response rates. Instead, the authors suggest targeting likely nonrespondents from the onset of a study with a different protocol to minimize nonresponse bias. To inform the targeting of sample members, various sources of information can be utilized: paradata collected by interviewers, demographic and substantive survey data from prior waves, and administrative data. Using these data, the likelihood of any sample member becoming a nonrespondent is estimated and on those sample cases least likely to respond, a more effective, often more costly, survey protocol can be employed to gain respondent cooperation. This paper describes the two components of this approach to reducing nonresponse bias. The authors demonstrate assignment of case priority based on response propensity models, and present empirical results from the use of a different protocol for prioritized cases. In a field data collection, a random half of cases with low response propensity received higher priority and increased resources. Resources for high-priority cases were allocated as interviewer incentives. They find that they were relatively successful in predicting response outcome prior to the survey and stress the need to test interventions in order to benefit from case prioritization." (author's abstract)... view less

Keywords
United States of America; survey research; response behavior; error; costs; survey; estimation; data; data capture; data quality; urban sociology; statistical method; method; North America

Classification
Research Design
Methods and Techniques of Data Collection and Data Analysis, Statistical Methods, Computer Methods

Document language
English

Publication Year
2010

Page/Pages
p. 21-29

Journal
Survey Research Methods, 4 (2010) 1

ISSN
1864-3361

Status
Published Version; peer reviewed

Licence
Deposit Licence - No Redistribution, No Modifications


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© 2007 - 2025 Social Science Open Access Repository (SSOAR).
Based on DSpace, Copyright (c) 2002-2022, DuraSpace. All rights reserved.