| Literature DB >> 29195708 |
John Ferguson1, Ailish Hannigan2, Austin Stack3.
Abstract
Record linkage algorithms aim to identify pairs of records that correspond to the same individual from two or more datasets. In general, fields that are common to both datasets are compared to determine which record-pairs to link. The classic model for probabilistic linkage was proposed by Fellegi and Sunter and assumes that individual fields common to both datasets are completely observed, and that the field agreement indicators are conditionally independent within the subsets of record pairs corresponding to the same and differing individuals. Herein, we propose a novel record linkage algorithm that is independent of these two baseline assumptions. We demonstrate improved performance of the algorithm in the presence of missing data and correlation patterns between the agreement indicators. The algorithm is computationally efficient and can be used to link large databases consisting of millions of record pairs. An R-package, corlink, has been developed to implement the new algorithm and can be downloaded from the CRAN repository.Keywords: Conditional independence; EM-algorithm; Fellegi/Sunter; Log-linear models; Record linkage
Mesh:
Year: 2017 PMID: 29195708 DOI: 10.1016/j.ijmedinf.2017.10.021
Source DB: PubMed Journal: Int J Med Inform ISSN: 1386-5056 Impact factor: 4.046