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Geographic Partitioning Techniques for the Anonymization of Health Care Data

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arxiv 1505.06786 v1 pith:5KQJSZBC submitted 2015-05-26 cs.CY

Geographic Partitioning Techniques for the Anonymization of Health Care Data

classification cs.CY
keywords dataanonymizationcarehealthsystemgeographicaggregationallow
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Hospitals and health care organizations collect large amounts of detailed health care data that is in high demand by researchers. Thus, the possessors of such data are in need of methods that allow for this data to be released without compromising the confidentiality of the individuals to whom it pertains. As the geographic aspect of this data is becoming increasingly relevant for research being conducted, it is important for an \emph{anonymization} process to pay due attention to the geographic attributes of such data. In this paper, a novel system for health care data anonymization is presented. At the core of the system is the aggregation of an initial regionalization guided by the use of a Voronoi diagram. We conduct a comparison with another geographic-based system of anonymization, GeoLeader. We show that our system is capable of producing results of a comparable quality with a much faster running time.

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