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A Bayesian Partitioning Approach to Duplicate Detection and Record Linkage

Presented by: 
Mauricio Sadinle Duke University
Date: 
Wednesday 14th September 2016 - 11:30 to 12:00
Venue: 
INI Seminar Room 1
Abstract: 
Record linkage techniques allow us to combine different sources of information from a common population in the absence of unique identifiers. Linking multiple files is an important task in a wide variety of applications, since it permits us to gather information that would not be otherwise available, or that would be too expensive to collect. In practice, an additional complication appears when the datafiles to be linked contain duplicates. Traditional approaches to duplicate detection and record linkage output independent decisions on the coreference status of each pair of records, which often leads to non-transitive decisions that have to be reconciled in some ad-hoc fashion. The joint task of linking multiple datafiles and finding duplicate records within them can be alternatively posed as partitioning the datafiles into groups of coreferent records. We present an approach that targets this partition as the parameter of interest, thereby ensuring transitive decisions. Our Bayesian implementation allows us to incorporate prior information on the reliability of the fields in the datafiles, which is especially useful when no training data are available, and it also provides a proper account of the uncertainty in the duplicate detection and record linkage decisions. We show how this uncertainty can be incorporated in certain models for population size estimation. Throughout the document we present a case study to detect killings that were reported multiple times to organizations recording human rights violations during the civil war of El Salvador. 
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University of Cambridge Research Councils UK
    Clay Mathematics Institute London Mathematical Society NM Rothschild and Sons