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An Indicator of Nonresponse Bias Derived from Call-back Analysis Paul P. Biemer RTI International and UNC.

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Presentation on theme: "An Indicator of Nonresponse Bias Derived from Call-back Analysis Paul P. Biemer RTI International and UNC."— Presentation transcript:

1 An Indicator of Nonresponse Bias Derived from Call-back Analysis Paul P. Biemer RTI International and UNC

2 Outline + Ignorable vs. non-ignorable nonresponse + Bias in the nonresponse adjusted estimator + Call-back model for estimating non-ignorable nonresponse + Application for estimating drug use prevalence + Future research

3 Estimation for Population Proportions + Consider a SRS of size n + Want to estimate some proportion, + Let denote the observed dichotomous variable + Let

4 Nonresponse Adjusted Estimator Estimator of is which is unbiased if nonresponse is ignorable w.r.t. i.e., if the error in is uncorrelated with

5 Bias in the Adjusted Estimator if nonresponse is ignorable

6 Call-back Model Analysis + Goal is to estimate when nonresponse is non-ignorable + Uses and call-back patterns to predict ; note, are only observed for respondents. + For example, suppose + Using data on call outcomes at each call-back for users and nonusers, we can estimate response propensity as a function of + Then

7 Call-outcomes by LOE for Alcohol Interviewed positives Interviewed negatives

8 Call-outcomes by LOE for Marijuana Interviewed negatives Interviewed positives

9 Call-outcomes by LOE for Cocaine Interviewed negatives Interviewed positives

10 1 = interview 2 = non-interview 3 = noncontact Call pattern 31111 => noncontact followed by interview Once interviewed, stays interviewed (absorbing state) Once non-interviewed, stays non-interviewed (absorbing state) Call-back Notation

11 Call-Back Data for LOE=5 PatternDefinitionUsersNonusersTotal 11111Interviewed at call 1n(1,1|1)n(1,1|2)n(1,1|+) 31111Interviewed at call 2n(2,1|1)n(2,1|2)n(2,1|+) 33111Interviewed at call 3n(3,1|1)n(3,1|2)n(3,1|+) 33311Interviewed at call 4n(4,1|1)n(4,1|2)n(4,1|+) 33331Interviewed at call 5n(5,1|1)n(5,1|2)n(5,1|+) 22222Non-interviewed at call 1n(1,2|+) 32222Non-interviewed at call 2n(2,2|+) 33222Non-interviewed at call 3n(3,2|+) 33322Non-interviewed at call 4n(4,2|+) 33332Non-interviewed at call 5n(5,2|+) 33333Never contactedn(5,3|+)

12 Simple Call-back Model for NI-NR LOE-5 Log-Likelihood Likelihood of interview after l calls Likelihood of no contact after 5 calls Likelihood of non-interview after l calls Obtain parameter estimates by maximum likelihood

13 Simple LOE-5 Model Parameters 11 parameters and 10 degrees of freedom Over-parameterized; requires constraints These constraints reduces parameters to 7:

14 Application – Drug Use Survey + Compared estimates of alcohol, marijuana and cocaine past year use prevalence for  unadjusted  current (traditional) adjustment  call-back model adjustment + Current adjustment incorporates 13 grouping variables and their interactions including a number of state specific components + Call-back model incorporated call-back data (for up to 15 call-backs) and the drug use variable of interest

15 Estimated Response Propensities for Simple LOE-15 Model Positive % Negative % Overall % Alcohol53.494.962.8 Marijuana96.958.662.8 Cocaine95.462.062.8

16 Prevalence Estimates for Simple LOE-15 Model Unadjusted % Current % Call-back % Bias Due to NI-NR Alcohol 65.8665.1577.92-12.77 Marijuana 16.9810.5811.00-0.42 Cocaine 3.632.352.39-0.04

17 Future Work + Test feasibility of incorporating call-back data in the nonresponse adjustment process  Enter # call-backs into the current logistic regression model (does not adjust for NI-NR)  Apply the simple call-back model to the drug use data after traditional adjustment to provide second adjustment factor for NI-NR + Use the simple call-back model to assess NI-NR bias following traditional adjustment approach


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