Estimation in generalized linear models based on linked data contaminated by mismatch error

Estimation in generalized linear models based on linked data contaminated by mismatch error

Identification of matching records in multiple files can be a challenging and error-prone task. Linkage error can considerably affect subsequent statistical analysis based on the resulting linked file. Several recent papers have studied post-linkage linear regression analys is with the response variable in one file and the covariates in a second file from the perspective of the ”Broken Sample Problem” and “Permuted Data”. In this paper, we present an extension of this line of research to exponential family response given the assumption of a small to moderate number of mismatches. A method based on observation-specific offsets to account for potential mismatches and `$\ell_1$-penalization is proposed, and its statistical properties are discussed. We also present sufficient conditions for the recovery of the correct correspondence between covariates and responses if the regression parameter is known. The proposed approach is compared to established baselines, namely the methods by Lahiri-Larsen and Chambers, both theoretically and empirically based on synthetic and real data. The results indicate that substantial improvements over those methods can be achieved even if only limited information about the linkage process is available.

  • Keyword : Record linkage, Broken Sample Problem, Generalized Linear models, Penalized Estimation, Permutation
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Zhen-bang Wang
PhD Student