Using proxy measures and other correlates of survey outcomes to adjust for non‐response: examples from multiple surveys

Non-response weighting is a commonly used method to adjust for bias due to unit non-response in surveys. Theory and simulations show that, to reduce bias effectively without increasing variance, a covariate that is used for non-response weighting adjustment needs to be highly associated with both the response indicator and the survey outcome variable. In practice, these requirements pose a challenge that is often overlooked, because those covariates are often not observed or may not exist. Surveys have recently begun to collect supplementary data, such as interviewer observations and other proxy measures of key survey outcome variables. To the extent that these auxiliary variables are highly correlated with the actual outcomes, these variables are promising candidates for non-response adjustment. In the present study, we examine traditional covariates and new auxiliary variables for the National Survey of Family Growth, the Medical Expenditure Panel Survey, the American National Election Survey, the European Social Surveys and the University of Michigan Transportation Research Institute survey. We provide empirical estimates of the association between proxy measures and response to the survey request as well as the actual survey outcome variables. We also compare unweighted and weighted estimates under various non-response models. Our results from multiple surveys with multiple recruitment protocols from multiple organizations on multiple topics show the difficulty of finding suitable covariates for non-response adjustment and the need to improve the quality of auxiliary data. Copyright (c) 2009 Royal Statistical Society.

[1]  Roderick J. A. Little,et al.  Statistical Analysis with Missing Data: Little/Statistical Analysis with Missing Data , 2002 .

[2]  R. Groves,et al.  A Theory-Guided Interviewer Training Protocol Regarding Survey Participation , 2001 .

[3]  B. K. Atrostic,et al.  Nonresponse in U.S. Government Household Surveys: Consistent Measures, Recent Trends, and New Insights , 2001 .

[4]  C. Raymond Bingham,et al.  Crash Risk among Teen Drivers: Identification and Prediction of Excess Risk , 2007 .

[5]  Peter Lynn,et al.  PEDAKSI: Methodology for Collecting Data about Survey Non-Respondents , 2003 .

[6]  Mick P. Couper,et al.  Participation in the 1990 Decennial Census , 1998 .

[7]  Gerty J. L. M. Lensvelt-Mulders,et al.  Nonresponse Among Ethnic Minorities: A Multivariate Analysis , 2007 .

[8]  Mick P. Couper,et al.  MEASURING SURVEY QUALITY IN A CASIC ENVIRONMENT , 2002 .

[9]  Stanley Presser,et al.  Changes in Telephone Survey Nonresponse over the Past Quarter Century , 2005 .

[10]  R. Little Survey Nonresponse Adjustments for Estimates of Means , 1986 .

[11]  E. D. de Leeuw,et al.  Trends in household survey nonresponse: a longitudinal and international comparison , 2002 .

[12]  R. Groves Nonresponse Rates and Nonresponse Bias in Household Surveys , 2006 .

[13]  F. Peracchi,et al.  Survey response and survey characteristics: microlevel evidence from the European Community Household Panel , 2005 .

[14]  H. Janson Influences on participation rate in a national Norwegian child development screening questionnaire study , 2003, Acta paediatrica.

[15]  M. Slattery,et al.  Contacting controls: are we working harder for similar response rates, and does it make a difference? , 2004, American journal of epidemiology.

[16]  F. Kreuter,et al.  Using Proxy Measures of Survey Outcomes in Post-Survey Adjustments : Examples from the European Social Survey ( ESS ) , 2007 .

[17]  Gabriele B. Durrant,et al.  Alternative Approaches to Multilevel Modelling of Survey Non‐Contact and Refusal , 2011 .

[18]  Robert M. Groves,et al.  The Impact of Nonresponse Rates on Nonresponse Bias A Meta-Analysis , 2008 .

[19]  R. Little,et al.  On weighting the rates in non‐response weights , 2003, Statistics in medicine.

[20]  E. Ziegel,et al.  Nonresponse In Household Interview Surveys , 1998 .

[21]  Katharine G. Abraham,et al.  Non-Response in the American Time Use Survey: Who is Missing from the Data and How Much Does it Matter? , 2006 .

[22]  D. Rubin,et al.  Statistical Analysis with Missing Data. , 1989 .

[23]  Andy Peytchev,et al.  Using Interviewer Observations To Improve Nonresponse Adjustments: NES 2004 , 2007 .

[24]  Ting Yan Using Proxy Measures of the Survey Variables in Post-Survey Adjustments in a Transportation Survey , 2007 .

[25]  J. Bethlehem Weighting nonresponse adjustments based on auxiliary information , 2002 .

[26]  James M. Dahlhamer,et al.  Privacy concerns, too busy, or just not interested: using doorstep concerns to predict survey nonresponse , 2008 .

[27]  T. Johnson,et al.  Using Community-Level Correlates to Evaluate Nonresponse Effects in a Telephone Survey , 2006 .

[28]  Phawn M. Letourneau,et al.  Nonresponse in the American Time Use Survey , 2008 .

[29]  D. Rubin,et al.  The central role of the propensity score in observational studies for causal effects , 1983 .

[30]  Robert M. Groves,et al.  Nonresponse in Household Interview Surveys: Groves/Nonresponse , 1998 .

[31]  M. Couper Survey introductions and data quality , 1997 .

[32]  Karen E Davis,et al.  National Survey of Family Growth, Cycle 6: sample design, weighting, imputation, and variance estimation. , 2006, Vital and health statistics. Series 2, Data evaluation and methods research.

[33]  R. Little,et al.  Does Weighting for Nonresponse Increase the Variance of Survey Means? (Conference Paper) , 2004 .

[34]  Natalie Shlomo,et al.  Estimation of an indicator of the representativeness of survey response , 2012 .

[35]  Andrew Copas,et al.  Dealing with non‐ignorable non‐response by using an ‘enthusiasm‐to‐respond’ variable , 1998 .

[36]  R. Schnell Nonresponse in Bevölkerungsumfragen , 1997 .