Logistic Propensity Models to Adjust for Nonresponse in Physician Surveys
Nuria Diaz-Tena,
Frank Potter,
Michael Sinclair and
Stephen Williams
Mathematica Policy Research Reports from Mathematica Policy Research
Abstract:
Looks at the advantages of using a different number of weighting cells or propensity scores to adjust for nonresponse in the Community Tracking Study physician survey.
Keywords: Nonresponse weighting; Propensity Modeling; Weighting Classes; Community Trackiing Study; Physician Surveys (search for similar items in EconPapers)
Pages: 6
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