Enhancing Dissemination of Health Estimates for Small Domains – NCHS
Sunday, Aug 3: 4:45 PM - 5:25 PM
Invited Paper Session
Music City Center
Due to smaller sample sizes and/or a lack of statistical reliability, some estimates for small domains (subpopulations) cannot be disseminated at NCHS. As a result, estimates may be suppressed or data may be aggregated across domains or time to produce more reliable estimates, which can mask potential differences in outcomes for some groups. Many approaches are available to improve the reliability of estimates for small domains and subsequently increase the number of estimates that can be disseminated. This presentation will describe some approaches used at NCHS to produce more reliable estimates for small subgroups of interest. These approaches include a new tool for small domain estimation (the enhanced modified Kalman filter) and using statistical learning methods to incorporate data from nonprobability surveys that may include oversamples of specific subpopulations. These model-based estimates can fill important data gaps for subpopulations of interest and improve dissemination. However, there are various challenges and limitations that are important to acknowledge, including (but not limited to): the bias-variance tradeoff; potential correlations between the selection probabilities for a nonprobability sample and the outcome variable(s) of interest; and when there are limited shared covariates across data sources to use in various data integration models.
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