Survey data integration for regression analysis using model calibration

Articles and reports: 12-001-X202300100002

Description: We consider regression analysis in the context of data integration. To combine partial information from external sources, we employ the idea of model calibration which introduces a “working” reduced model based on the observed covariates. The working reduced model is not necessarily correctly specified but can be a useful device to incorporate the partial information from the external data. The actual implementation is based on a novel application of the information projection and model calibration weighting. The proposed method is particularly attractive for combining information from several sources with different missing patterns. The proposed method is applied to a real data example combining survey data from Korean National Health and Nutrition Examination Survey and big data from National Health Insurance Sharing Service in Korea.
Issue Number: 2023001
Author(s): Wang, Zhonglei; Kim, Hang J.; Kim, Jae Kwang

Main Product: Survey Methodology

FormatRelease dateMore information
HTMLJune 30, 2023
PDFJune 30, 2023

Related information

Subjects and keywords

Subjects

Keywords

Date modified: