Open Access

The Impact of Targeted Data Collection on Nonresponse Bias in an Establishment Survey: A Simulation Study of Adaptive Survey Design

Journal of Official Statistics's Cover Image
Journal of Official Statistics
Special Issue on Responsive and Adaptive Survey Design

Cite

Atrostic, B.K., N. Bates, G. Burt, and A. Silberstein. 2001. “Nonresponse in US Government Household Surveys: Consistent Measures, Recent Trends, and New Insights.” Journal of Official Statistics 17(2): 209–226.Search in Google Scholar

Brick, J.M. and D. Williams. 2013. “Explaining Rising Nonresponse Rates in Cross-Sectional Surveys.” The ANNALS of the American Academy of Political and Social Science 645(1): 36–59.10.1177/0002716212456834Search in Google Scholar

Calinescu, M., S. Bhulai, and B. Schouten. 2013. “Optimal Resource Allocation in Survey Designs.” European Journal of Operational Research 226(1): 115–121. Doi: http://dx.doi.org/10.1016/j.ejor.2012.10.046.10.1016/j.ejor.2012.10.046Search in Google Scholar

Couper, M.P. 1998. “Measuring Survey Quality in a CASIC Environment.” In Proceedings of the Survey Research Methods Section of the American Statistical Association, August 1998. 41–49. Dallas, TX.Search in Google Scholar

Couper, M. and L. Lyberg. 2005. “The Use of Paradata in Survey Research.” In Proceedings of the International Statistical Institute Meetings. April 2005. Sydney, Australia.Search in Google Scholar

Couper, M.P. and J. Wagner. 2011. “Using Paradata and Responsive Design to Manage Survey Nonresponse.” ISI World Statistics Congress, Dublin, Ireland.Search in Google Scholar

Curtin, R., S. Presser, and E. Singer. 2005. “Changes in Telephone Survey Nonresponse over the Past Quarter Century.” Public Opinion Quarterly 69(1): 87–98. Doi: https://doi.org/10.1093/poq/nfi002.10.1093/poq/nfi002Search in Google Scholar

de Leeuw, E. and W. de Heer. 2002. “Trends in Household Survey Nonresponse: A Longitudinal and International Comparison.” In Survey Nonresponse, edited by R.M. Groves, 41–54. New York: John Wiley & Sons.Search in Google Scholar

Dillman, D.A., E. Singer, J.R. Clark, and J.B. Treat. 1996. “Effects of Benefits Appeals, Mandatory Appeals, and Variations in Statements of Confidentiality on Completion Rates for Census Questionnaires.” Public Opinion Quarterly 60(3): 376–389. Doi: https://doi.org/10.1086/297759.10.1086/297759Search in Google Scholar

Earp, M.S. and J.S. McCarthy. 2009. Using Respondent Prediction Models to Improve Efficiency of Incentive Allocation. United States Department of Agriculture, National Agricultural Statistics Service. Available at: http://purl.umn.edu/235087 (accessed April 2017).Search in Google Scholar

Earp, M. and J. McCarthy. 2011. “Using Nonresponse Propensity Scores to Improve Data Collection Methods and Reduce Nonresponse Bias.” In Proceedings, American Association of Public Opinion Research. May 2011. Joint statistical meeting, Phoenix, AZ. Available at: http://ww2.amstat.org/sections/srms/Proceedings/y2011/Files/400192.pdf (accessed April 2017).Search in Google Scholar

El-Osta, H. and J.D. Johnson. 1998. Determinants of Financial Performance of Commercial Dairy Farms. Resource Economics Division, Economic Research Service, U.S. Department of Agriculture. Technical Bulletin No. 1859. http://purl.umn.edu/33561 (accessed April 2017).Search in Google Scholar

Groves, R.M., D. Cantor, M. Couper, K. Levin, K. McGonagle, E. Singer, and J. Van Hoewyk. 1997. “Research Investigations in Gaining Participation from Sample Firms in the Current Employment Statistics Program.” In Proceedings of the Section on Survey Research Methods of the American Statistical Association: 289–294. August 1997. Anaheim, CA. Available at: http://ww2.amstat.org/sections/SRMS/Proceedings/papers/1997_047.pdf (accessed April 2017).Search in Google Scholar

Groves, R.M. and S.G. Heeringa. 2006. “Responsive Design for Household Surveys: Tools for Actively Controlling Survey Errors and Costs.” Journal of the Royal Statistical Society: Series A (Statistics in Society) 169(3): 439–457. Doi: http://dx.doi.org/10.1111/j.1467-985X.2006.00423.x.10.1111/j.1467-985X.2006.00423.xSearch in Google Scholar

Interagency Group on Establishment Nonresponse (IGEN). 1998. Establishment Nonresponse: Revisiting the Issues and Looking to the Future. Council of Professional Associations on Federal Statistics, November 1998 Conference. Available at: https://fcsm.sites.usa.gov/files/2014/05/IGEN-COPAFS.pdf (accessed April 2017).Search in Google Scholar

Kott, P. 2001a. “The Delete-a-group Jackknife.” Journal of Official Statistics 17(4): 521–526.Search in Google Scholar

Kott, P.S. 2001b. Using the Delete-a-Group Jackknife Variance Estimator in NASS Surveys. United States Department of Agriculture, National Agricultural Statistics Service. Available at: https://www.nass.usda.gov/Education_and_Outreach/Reports,_Presentations_and_Conferences/allreports/Using_the_Delete-a-Group_Jackknife_Estimator_in_NASS_Surveys.pdf (accessed December 2016).Search in Google Scholar

Luiten, A. and B. Schouten. 2013. “Tailored Fieldwork Design to Increase Representative Household Survey Response: an Experiment in the Survey of Consumer Satisfaction.” Journal of the Royal Statistical Society: Series A (Statistics in Society) 176(1): 169–189. Doi: http://dx.doi.org/10.1111/j.1467-985X.2012.01080.x.10.1111/j.1467-985X.2012.01080.xSearch in Google Scholar

McCarthy, J.S., T. Jacob, and A. McCracken. 2010. Modeling Non-response in National Agricultural Statistics Service (NASS) Surveys Using Classification Trees. Research and Development Division Research Report RDD-10-05, National Agricultural Statistics Service, U.S. Department of Agriculture, Washington, DC.Search in Google Scholar

Mitchell, M. and J.S. McCarthy. 2012. “Voted “least likely to respond”: Using Classification Trees to Identify Likely Non-respondents and Proactively Manage Data Collection in NASS’s Quarterly Agricultural Survey.” Presented at the Fourth Annual International Conference on Establishment Surveys, Montreal, Quebec, Canada.Search in Google Scholar

Petroni, R., R. Sigman, D. Willimack, S. Cohen, and C. Tucker. 2004. Response Rates and Nonresponse in Establishment Surveys BLS and Census Bureau. Presented to the Federal Economic Statistics Advisory Committee: 1–50.Search in Google Scholar

Peytchev, A., S. Riley, J. Rosen, J. Murphy, and M. Lindblad. 2010. “Reduction of Nonresponse Bias in Surveys through Case Prioritization.” Survey Research Methods 4(1): 21–29. Doi: http://dx.doi.org/10.18148/srm/2010.v4i1.3037.Search in Google Scholar

Phipps, P.A., S.J. Butani, and Y.I. Chun. 1995. “Research on Establishment-Survey Questionnaire Design.” Journal of Business & Economic Statistics 13(3): 337–346. Doi: http://dx.doi.org/10.2307/1392193.10.2307/1392193Search in Google Scholar

Rivière, P. 2002. “What Makes Business Statistics Special?” International Statistical Review 70(1): 145–159.10.1111/j.1751-5823.2002.tb00353.xSearch in Google Scholar

Schouten, B., F. Cobben, and J.G. Bethlehem. 2009. “Indicators for the Representativeness of Survey Response.” Survey Methodology 35(1): 101–113.Search in Google Scholar

Schouten, B., F. Cobben, P. Lundquist, and J. Wagner. 2016. “Does More Balanced Survey Response Imply Less Non-Response Bias?” Journal of the Royal Statistical Society, Series A (Statistics in Society) 179(3): 727–748. Doi: http://dx.doi.org/10.1111/rssa.12152.10.1111/rssa.12152Search in Google Scholar

Tomaskovic-Devey, D., J. Leiter, and S. Thompson. 1994. “Organizational Survey Nonresponse.” Administrative Science Quarterly: 439–457. Doi: http://dx.doi.org/10.2307/2393298.10.2307/2393298Search in Google Scholar

Tulp, D.R., C.E. Hoy, G.L. Kusch, S.J. Cole. 1991. “Nonresponse under mandatory vs. voluntary reporting in the 1989 survey of pollution abatement costs and expenditures (PACE).” In Proceedings of the Survey Research Methods Section of the American Statistical Association, August 1991, 272–277. Alexandria, VA.Search in Google Scholar

Villatoro, M. and M. Langemeier. 2006. “Factors Impacting Farm Growth.” Journal of the American Society of Farm Managers and Rural Appraisers 69: 74–80.Search in Google Scholar

Wagner, J.R. 2008. “Adaptive Survey Design to Reduce Nonresponse Bias.” Program in Survey Methodology. Ann Arbor, University of Michigan. PhD: 158.Search in Google Scholar

Wagner, J., B.T. West, N. Kirgis, J.M. Lepkowski, W.G. Axinn, and S.K. Ndiaye. 2012. “Use of Paradata in a Responsive Design Framework to Manage a Field Data Collection.” Journal of Official Statistics 28(4): 477–499.Search in Google Scholar

Weber, J.G. and D.M. Clay. 2013. “Who Does not Respond to the Agricultural Resource Management Survey and Does it Matter?” American Journal of Agricultural Economics 95(3): 755–771. Doi: https://doi.org/10.1093/ajae/aas171.10.1093/ajae/aas171Search in Google Scholar

Willimack, D.K., E. Nichols, and S. Sudman. “Understanding Unit and Item Nonresponse in Business Surveys.” In Survey nonresponse, edited by Robert M. Groves, Don A. Dillman, John L. Eltinge and Roderick J. A. Little, 213–227. New York: Wiley, 2002.Search in Google Scholar

Zech, L. and G. Pederson. 2003. “Predictors of Farm Performance and Repayment Ability as Factors for Use in Risk-Rating Models.” Agricultural Finance Review 63(1): 41–54. Doi: http://dx.doi.org/10.1108/00214990380001140.10.1108/00214990380001140Search in Google Scholar

eISSN:
2001-7367
Language:
English
Publication timeframe:
4 times per year
Journal Subjects:
Mathematics, Probability and Statistics