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  7. Dasymetric Modeling and Uncertainty

Dasymetric Modeling and Uncertainty

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Nagle2014_AnnalsAAG.pdf (855.97 KB)
Permanent Link(s)
https://hdl.handle.net/1813/50065
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Presentations of the NCRN Coordinating Office
Author
Nagle, Nicholas N.
Buttenfield, Barbara P.
Leyk, Stefan
Spielman, Seth
Abstract

Survey weights are often adjusted so that the estimated totals match with known benchmark totals. This practice is limited by the requirement that benchmarks be perfectly known and the tendency for survey weight variability to increase as more benchmarks are included. We modify the Iterative Proportional Fitting adjustment method to incorporate benchmarks that are imprecisely known. This allows the use of benchmarks controls from sources of data that are not currently eligible for benchmarking to, such as auxiliary surveys or other incomplete records. This method also allows us to efficiently increase the number and types of benchmark data that are used for survey weighting. We present results from efforts to adjust public use microdata samples to generate estimates and microsimulations for small areas (i.e. tracts and block groups).

Sponsorship
This research is funded by the National Science
Foundation grant “Collaborative Research: Putting
People in Their Place: Constructing a Geography for
Census Microdata” (BCS-0961598 and BCS-0961294)
and “NCRN-SN: SSCRN: Spatial Sciences Census Research
Node” (SES-1132008).
Prepared by Oak Ridge National Laboratory, P.O.
Box 2008, Oak Ridge, TN 37831–6285, managed by
UT-Battelle, LLC for the U.S. Department of Energy
under contract no. DEAC05–000R22725.
Date Issued
2013-11-07
Type
article

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