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Activity Number: 563 - Multiple Imputation for Measurement Errors and Other Structured Patterns of Missing Data
Type: Topic Contributed
Date/Time: Wednesday, August 2, 2017 : 2:00 PM to 3:50 PM
Sponsor: Survey Research Methods Section
Abstract #322700 View Presentation
Title: Multiple Imputation in Data Fusion: Making Better Assumptions Than Conditional Independence
Author(s): Volker Bosch* and Philipp Gaffert
Companies: GfK SE and GfK SE
Keywords: data fusion ; statistical matching ; conditional independence assumption ; measurement error model
Abstract:

The missing pattern of data fusion implies that the variables that are specific to the data sets are never jointly observed. When applying standard imputation techniques, independence conditioned on the common variables is implicitly assumed. In general, however, this assumption does not hold; consequently, the estimated correlations between the fused specific variables are usually biased toward zero. We argue that in the absence of further information, a correlation lying well within the bounds of the conditional independence assumption (CIA) and one specific measurement error model is a significantly more sensible assumption. This argument is derived from a simple trivariate model and empirically supported by data from various fields.


Authors who are presenting talks have a * after their name.

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